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Image Processing IEEE 2014 Projects
Web : www.kasanpro.com Email : sales@kasanpro.com
List Link : http://kasanpro.com/projects-list/image-processing-ieee-2014-projects
Title :Building Change Detection Based on Satellite Stereo Imagery and Digital Surface Models
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/building-change-detection-based-satellite-stereo-imagery-digital-surface-model
Abstract : Building change detection is a major issue for urban area monitoring. Due to different imaging conditions
and sensor parameters, 2-D information delivered by satellite images from different dates is often not sufficient when
dealing with building changes. Moreover, due to the similar spectral characteristics, it is often difficult to distinguish
buildings from other man-made constructions, like roads and bridges, during the change detection procedure.
Therefore, stereo imagery is of importance to provide the height component which is very helpful in analyzing 3-D
building changes. In this paper, we propose a change detection method based on stereo imagery and digital surface
models (DSMs) generated with stereo matching methodology and provide a solution by the joint use of height
changes and Kullback-Leibler divergence similarity measure between the original images. The Dempster-Shafer
fusion theory is adopted to combine these two change indicators to improve the accuracy. In addition, vegetation and
shadow classifications are used as no-building change indicators for refining the change detection results. In the end,
an object-based building extraction method based on shape features is performed. For evaluation purpose, the
proposed method is applied in two test areas, one is in an industrial area in Korea with stereo imagery from the same
sensor and the other represents a dense urban area in Germany using stereo imagery from different sensors with
different resolutions. Our experimental results confirm the efficiency and high accuracy of the proposed methodology
even for different kinds and combinations of stereo images and consequently different DSM qualities.
Title :PCA Feature Extraction for Change Detection in Multidimensional Unlabelled Data
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/pca-feature-extraction-change-detection-multidimensional-unlabelled-data
Abstract : When classifiers are deployed in real world applications, it is assumed that the distribution of the incoming
data matches the distribution of the data used to train the classifier. This assumption is often incorrect, which
necessitates some form of change detection or adaptive classification. While there is a lot of research on change
detection based on the classification error, monitored over the course of the operation of the classifier, finding
changes in multidimensional unlabelled data is still a challenge. Here we propose to apply principal component
analysis (PCA) for feature extraction prior to the change detection. Supported by a theoretical example, we argue that
the components with the lowest variance should be retained as the extracted features because they are more likely to
be affected by a change. We chose a recently proposed semi-parametric log-likelihood change detection criterion
(SPLL) which is sensitive to changes in both mean and variance of the multidimensional distribution. An experiment
with 35 data sets and an illustration with a simple video segmentation demonstrate the advantage of using extracted
features compared to raw data. Further analysis shows that feature extraction through PCA is beneficial, specifically
for data with multiple balanced classes.
Title :Remote Sensing Image Segmentation by Combining Spectral and Texture Features
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/remote-sensing-image-segmentation-combining-spectral-texture-features
Abstract : We present a new method for remote sensing image segmentation, which utilizes both spectral and
texture information. Linear filters are used to provide enhanced spatial patterns. For each pixel location, we compute
combined spectral and texture features using local spectral histograms, which concatenate local histograms of all
input bands. We regard each feature as a linear combination of several representative features, each of which
corresponds to a segment. Segmentation is given by estimating combination weights, which indicate segment
ownership of pixels. We present segmentation solutions where representative features are either known or unknown.
We also show that feature dimensions can be greatly reduced via subspace projection. The scale issue is
investigated, and an algorithm is presented to automatically select proper scales, which does not require
segmentation at multiplescale levels. Experimental results demonstrate the promise of the proposed method.
Title :Brain Tumor Detection using Region based Iterative Reconstruction and Segmentation
Language : Java
Project Link : http://kasanpro.com/p/java/brain-tumor-detection-region-based-iterative-reconstruction-segmentation
Abstract : X-ray computed tomography (CT) is a powerful tool for noninvasive imaging of time-varying objects.
Identifiying tumors from the CT image is a chalanging one. In this paper we proposed a reconstruct method for CT
image and tumors are detected then using edge based segmentation algorithm.. In the past, methods have been
proposed to reconstruct images from continuously changing objects. For discretely or structurally changing objects,
however, such methods fail to reconstruct high quality images, mainly because assumptions about continuity are no
longer valid. In this paper, we propose a method to reconstruct structurally changing objects. Starting from the
observation that there exist regions within the scanned object that remain unchanged over time, we introduce an
iterative optimization routine that can automatically determine these regions and incorporate this knowledge in an
algebraic reconstruction method. And tumor detection was made from the reconstructed image.
Title :Automatic graph based approach for prior detection of diabetes and hypertension in retinal images
Language : Java
Project Link :
http://kasanpro.com/p/java/automatic-graph-based-prior-detection-diabetes-hypertension-retinal-images
Abstract : Retinal vessels are affected by several systemic diseases, namely diabetes, hypertension, and vascular
disorders. In diabetic retinopathy, the blood vessels often show abnormalities at early stages, as well as vessel
diameter alterations . Changes in retinal blood vessels, such as significant dilatation and elongation of main arteries,
veins, and their branches are also frequently associated with hypertension and other cardiovascular pathologies. The
classification of retinal vessels into artery/vein (A/V) is an important phase for automating the detection of vascular
changes, and for the calculation of characteristic signs associated with several systemic diseases such as diabetes,
hypertension, and other cardiovascular conditions. This paper presents an automatic approach for A/V classification
based on the analysis of a graph extracted from the retinal vasculature. The proposed method classifies the entire
vascular tree deciding on the type of each intersection point (graph nodes) and assigning one of two labels to each
vessel segment (graph links). Final classification of a vessel segment as A/V is performed through the combination of
the graph-based labeling results with a set of intensity features. The features were extracted, including exudates,
bifurcation angle, artery-to-veins diameter ratio, mean artery and veins diameters, form and size of optic disc, and
vessel tortuosity. And the identification of diabetes are made by the rule based conditions.
Image Processing IEEE 2014 Projects
Title :A Compressive Sensing based Secure Watermark Detection and Privacy Preserving Storage Framework
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/secure-watermark-detection-privacy-preserving-storage-framework
Abstract : Privacy is a critical issue when the data owners outsource data storage or processing to a third party
computing service, such as the cloud. In this paper, we identify a cloud computing application scenario that requires
simultaneously performing secure watermark detection and privacy preserving multimedia data storage. We then
propose a compressive sensing (CS)-based framework using secure multiparty computation (MPC) protocols to
address such a requirement. In our framework, the multimedia data and secret watermark pattern are presented to
the cloud for secure watermark detection in a CS domain to protect the privacy. During CS transformation, the privacy
of the CS matrix and the watermark pattern is protected by the MPC protocols under the semi-honest security model.
We derive the expected watermark detection performance in the CS domain, given the target image, watermark
pattern, and the size of the CS matrix (but without the CS matrix itself). The correctness of the derived performance
has been validated by our experiments. Our theoretical analysis and experimental results show that secure watermark
detection in the CS domain is feasible. Our framework can also be extended to other collaborative secure signal
processing and data-mining applications in the cloud.
Title :A New Iterative Triclass Thresholding Technique in Image Segmentation
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/new-iterative-triclass-thresholding-technique-image-segmentation
Abstract : We present a new method in image segmentation that is based on Otsu's method but iteratively searches
for subregions of the image for segmentation, instead of treating the full image as a whole region for processing. The
iterative method starts with Otsu's threshold and computes the mean values of the two classes as separated by the
threshold. Based on the Otsu's threshold and the two mean values, the method separates the image into three
classes instead of two as the standard Otsu's method does. The first two classes are determined as the foreground
and background and they will not be processed further. The third class is denoted as a to-be-determined (TBD) region
that is processed at next iteration. At the succeeding iteration, Otsu's method is applied on the TBD region to
calculate a new threshold and two class means and the TBD region is again separated into three classes, namely,
foreground, background, and a new TBD region, which by definition is smaller than the previous TBD regions. Then,
the new TBD region is processed in the similar manner. The process stops when the Otsu's thresholds calculated
between two iterations is less than a preset threshold. Then, all the intermediate foreground and background regions
are, respectively, combined to create the final segmentation result. Tests on synthetic and real images showed that
the new iterative method can achieve better performance than the standard Otsu's method in many challenging
cases, such as identifying weak objects and revealing fine structures of complex objects while the added
computational cost is minimal.
Title :As-Projective-As-Possible Image Stitching with Moving DLT
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/as-projective-as-possible-image-stitching-moving-dlt
Abstract : We investigate projective estimation under model inadequacies, i.e., when the underpinning assumptions
of the projective model are not fully satisfied by the data. We focus on the task of image stitching which is customarily
solved by estimating a projective warp -- a model that is justified when the scene is planar or when the views differ
purely by rotation. Such conditions are easily violated in practice, and this yields stitching results with ghosting
artefacts that necessitate the usage of deghosting algorithms. To this end we propose as-projective-as-possible
warps, i.e., warps that aim to be globally projective, yet allow local non-projective deviations to account for violations
to the assumed imaging conditions. Based on a novel estimation technique called Moving Direct Linear
Transformation (Moving DLT), our method seamlessly bridges image regions that are inconsistent with the projective
model. The result is highly accurate image stitching, with significantly reduced ghosting effects, thus lowering the
dependency on post hoc deghosting.
http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews
Title :Captcha as Graphical Passwords--A New Security Primitive Based on Hard AI Problems
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/captcha-graphical-password
Abstract : Many security primitives are based on hard mathematical problems. Using hard AI problems for security is
emerging as an exciting new paradigm, but has been underexplored. In this paper, we present a new security
primitive based on hard AI problems, namely, a novel family of graphical password systems built on top of Captcha
technology, which we call Captcha as graphical passwords (CaRP). CaRP is both a Captcha and a graphical
password scheme. CaRP addresses a number of security problems altogether, such as online guessing attacks, relay
attacks, and, if combined with dual-view technologies, shoulder-surfing attacks. Notably, a CaRP password can be
found only probabilistically by automatic online guessing attacks even if the password is in the search set. CaRP also
offers a novel approach to address the well-known image hotspot problem in popular graphical password systems,
such as PassPoints, that often leads to weak password choices. CaRP is not a panacea, but it offers reasonable
security and usability and appears to fit well with some practical applications for improving online security.
Title :Corruptive Artifacts Suppression for Example-Based Color Transfer
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/corruptive-artifacts-suppression-example-based-color-transfer
Abstract : Example-based color transfer is a critical operation in image editing but easily suffers from some corruptive
artifacts in themapping process. In this paper,we propose a novel unified color transfer framework with corruptive
artifacts suppression, which performs iterative probabilistic color mapping with self-learning filtering scheme and
multiscale detail manipulation scheme inminimizing the normalized Kullback-Leibler distance. First, an iterative
probabilistic color mapping is applied to construct the mapping relationship between the reference and target images.
Then, a self-learning filtering scheme is applied into the transfer process to prevent from artifacts and extract details.
The transferred output and the extracted multi-levels details are integrated by the measurement minimization to yield
the final result. Our framework achieves a sound grain suppression, color fidelity and detail appearance seamlessly.
For demonstration, a series of objective and subjective measurements are used to evaluate the quality in color
transfer. Finally, a few extended applications are implemented to show the applicability of this framework.
Image Processing IEEE 2014 Projects
Title :Fingerprint Compression Based on Sparse Representation
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/fingerprint-compression-based-sparse-representation
Abstract : A new fingerprint compression algorithm based on sparse representation is introduced. Obtaining an
overcomplete dictionary from a set of fingerprint patches allows us to represent them as a sparse linear combination
of dictionary atoms. In the algorithm, we first construct a dictionary for predefined fingerprint image patches. For a
new given fingerprint images, represent its patches according to the dictionary by computing l0-minimization and then
quantize and encode the representation. In this paper, we consider the effect of various factors on compression
results. Three groups of fingerprint images are tested. The experiments demonstrate that our algorithm is efficient
compared with several competing compression techniques (JPEG, JPEG 2000, andWSQ), especially at high
compression ratios. The experiments also illustrate that the proposed algorithm is robust to extract minutiae.
Title :How to Estimate the Regularization Parameter for Spectral Regression Discriminant Analysis and its Kernel
Version?
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/regularization-parameter-spectral-regression-discriminant-analysis
Abstract : Spectral regression discriminant analysis (SRDA) has recently been proposed as an efficient solution to
large-scale subspace learning problems. There is a tunable regularization parameter in SRDA, which is critical to
algorithm performance. However, how to automatically set this parameter has not been well solved until now. So this
regularization parameter was only set to be a constant in SRDA, which is obviously suboptimal. This paper proposes
to automatically estimate the optimal regularization parameter of SRDA based on the perturbation linear discriminant
analysis (PLDA). In addition, two parameter estimation methods for the kernel version of SRDA are also developed.
One is derived from the method of optimal regularization parameter estimation for SRDA. The other is to utilize the
kernel version of PLDA. Experiments on a number of publicly available databases demonstrate the effectiveness of
the proposed methods for face recognition, spoken letter recognition, handwritten digit recognition, and text
categorization.
Title :Image Classification Using Multiscale Information Fusion Based on Saliency Driven Nonlinear Diffusion Filtering
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/image-classification-based-fusion-diffusion-filtering
Abstract : In this paper, we propose saliency driven image multiscale nonlinear diffusion filtering. The resulting scale
space in general preserves or even enhances semantically important structures such as edges, lines, or flow-like
structures in the foreground, and inhibits and smoothes clutter in the background. The image is classified using
multiscale information fusion based on the original image, the image at the final scale at which the diffusion process
converges, and the image at a midscale. Our algorithm emphasizes the foreground features, which are important for
image classification. The background image regions, whether considered as contexts of the foreground or noise to the
foreground, can be globally handled by fusing information from different scales. Experimental tests of the
effectiveness of the multiscale space for the image classification are conducted on the following publicly available
datasets: 1) the PASCAL 2005 dataset; 2) the Oxford 102 flowers dataset; and 3) the Oxford 17 flowers dataset, with
high classification rates.
Title :LBP-Based Edge-Texture Features for Object Recognition
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/lbp-based-edge-texture-features-object-recognition
Abstract : This paper proposes two sets of novel edge-texture features, Discriminative Robust Local Binary Pattern
(DRLBP) and Ternary Pattern (DRLTP), for object recognition. By investigating the limitations of Local Binary Pattern
(LBP), Local Ternary Pattern (LTP) and Robust LBP (RLBP), DRLBP and DRLTP are proposed as new features.
They solve the problem of discrimination between a bright object against a dark background and vice-versa inherent
in LBP and LTP. DRLBP also resolves the problem of RLBP whereby LBP codes and their complements in the same
block are mapped to the same code. Furthermore, the proposed features retain contrast information necessary for
proper representation of object contours that LBP, LTP, and RLBP discard. Our proposed features are tested on
seven challenging data sets: INRIA Human, Caltech Pedestrian, UIUC Car, Caltech 101, Caltech 256, Brodatz, and
KTH-TIPS2- a. Results demonstrate that the proposed features outperform the compared approaches on most data
sets.
Title :Learning Layouts for Single-Page Graphic Designs
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/learning-layouts-single-page-graphic-designs
Abstract : This paper presents an approach for automatically creating graphic design layouts using a new
energy-based model derived from design principles. The model includes several new algorithm for analyzing graphic
designs, including the prediction of perceived importance, alignment detection, and hierarchical segmentation. Given
the model, we use optimization to synthesize new layouts for a variety of single-page graphic designs. Model
parameters are learned with Nonlinear Inverse Optimization (NIO) from a small number of example layouts. To
demonstrate our approach, we show result for application including generation design layouts in various styles,
retargeting designs to new sizes, and improving existing designs. We also compare our automatic results with
designs created using crowdsourcing and show that our approach performs slightly better than novice designers.
Image Processing IEEE 2014 Projects
Title :Localization of License Plate Number Using Dynamic Image Processing Techniques And Genetic Algorithms
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/license-plate-number-localization-using-image-processing-and-genetic-algorithms
Abstract : In this research, a design of a new genetic algorithm (GA) is introduced to detect the locations of the
License Plate (LP) symbols. An adaptive threshold method has been applied to overcome the dynamic changes of
illumination conditions when converting the image into binary. Connected component analysis technique (CCAT) is
used to detect candidate objects inside the unknown image. A scale-invariant Geometric Relationship Matrix (GRM)
has been introduced to model the symbols layout in any LP which simplifies system adaptability when applied in
different countries. Moreover, two new crossover operators, based on sorting, have been introduced which greatly
improved the convergence speed of the system. Most of CCAT problems such as touching or broken bodies have
been minimized by modifying the GA to perform partial match until reaching to an acceptable fitness value. The
system has been implemented using MATLAB and various image samples have been experimented to verify the
distinction of the proposed system. Encouraging results with 98.4% overall accuracy have been reported for two
different datasets having variability in orientation, scaling, plate location, illumination and complex background.
Examples of distorted plate images were successfully detected due to the independency on the shape, color, or
location of the plate.
http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews
Title :Model-Based Edge Detector for Spectral Imagery Using Sparse Spatiospectral Masks
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/model-based-edge-detector-spectral-imagery-using-sparse-spatiospectral-masks
Abstract : Two model-based algorithms for edge detection in spectral imagery are developed that specifically target
capturing intrinsic features such as isoluminant edges that are characterized by a jump in color but not in intensity.
Given prior knowledge of the classes of reflectance or emittance spectra associated with candidate objects in a
scene, a small set of spectral-band ratios, which most profoundly identify the edge between each pair of materials,
are selected to define a edge signature. The bands that form the edge signature are fed into a spatial mask,
producing a sparse joint spatiospectral nonlinear operator. The first algorithm achieves edge detection for every
material pair by matching the response of the operator at every pixel with the edge signature for the pair of materials.
The second algorithm is a classifier-enhanced extension of the first algorithm that adaptively accentuates distinctive
features before applying the spatiospectral operator. Both algorithms are extensively verified using spectral imagery
from the airborne hyperspectral imager and from a dots-in-a-well midinfrared imager. In both cases, the multicolor
gradient (MCG) and the hyperspectral/spatial detection of edges (HySPADE) edge detectors are used as a
benchmark for comparison. The results demonstrate that the proposed algorithms outperform the MCG and
HySPADE edge detectors in accuracy, especially when isoluminant edges are present. By requiring only a few bands
as input to the spatiospectral operator, the algorithms enable significant levels of data compression in band selection.
In the presented examples, the required operations per pixel are reduced by a factor of 71 with respect to those
required by the MCG edge detector.
Title :Modeling of Speaking Rate Influences on Mandarin Speech Prosody and Its Application to Speaking
Rate-controlled TTS
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/application-speaking-rate-controlled-tts
Abstract : A new data-driven approach to building a speaking rate-dependent hierarchical prosodic model (SR-HPM),
directly from a large prosody-unlabeled speech database containing utterances of various speaking rates, to describe
the influences of speaking rate on Mandarin speech prosody is proposed. It is an extended version of the existing
HPM model which contains 12 sub-models to describe various relationships of prosodic-acoustic features of speech
signal, linguistic features of the associated text, and prosodic tags representing the prosodic structure of speech. Two
main modifications are suggested. One is designing proper normalization functions from the statistics of the whole
database to compensate the influences of speaking rate on all prosodic-acoustic features. Another is modifying the
HPM training to let its parameters be speaking-rate dependent. Experimental results on a large Mandarin read speech
corpus showed that the parameters of the SR-HPM together with these feature normalization functions interpreted the
effects of speaking rate onMandarin speech prosody very well. An application of the SR-HPM to design and
implement a speaking rate-controlledMandarin TTS system is demonstrated. The system can generate natural
synthetic speech for any given speaking rate in awide range of 3.4-6.8 syllables/sec.Two subjective tests,MOSand
preference test,were conducted to compare the proposed system with the popular HTS system. TheMOS scores of
the proposed system were in the range of 3.58-3.83 for eight different speaking rates, while they were in 3.09-3.43 for
HTS. Besides, the proposed system had higher preference scores (49.8%-79.6%) than those (9.8%-30.7%) ofHTS.
This confirmed the effectiveness of the speaking rate control method of the proposed TTS system.
Title :Multisensor Fusion-Based Concurrent Environment Mapping and Moving Object Detection for Intelligent
Service Robotics
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/moving-object-detection-intelligent-service-robotics
Abstract : Intelligent service robot development is an important and critical issue for human community applications.
With the diverse and complex service needs, the perception and navigation are essential subjects. This investigation
focuses on the synergistic fusion of multiple sensors for an intelligent service robot that not only performs
self-localization and mapping but also detects moving objects or people in the building it services. First of all, a new
augmented approach of graph-based optimal estimation was derived for concurrent robot postures and moving object
trajectory estimate. Moreover, all the moving object detection issues of a robot's indoor navigation are divided and
conquered via multisensor fusion methodologies. From bottom to up, the estimation fusion methods are tactically
utilized to get a more precise result than the one from only the laser ranger or stereo vision. Furthermore, for solving
the consistent association problem of moving objects, a covariance area intersection belief assignment is applied for
motion state evaluation and the complementary evidences such as kinematics and vision features are both
synergized together to enhance the association efficiency with the evidence fusion method. The proof of concept with
experiments has been successfully demonstrated and analyzed.
Title :Personalized Geo-Specific Tag Recommendation for Photos on Social Websites
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/personalized-geo-specific-tag-recommendation-photos-social-websites
Abstract : Social tagging becomes increasingly important to organize and search large-scale community-contributed
photos on social websites. To facilitate generating high-quality social tags, tag recommendation by automatically
assigning relevant tags to photos draws particular research interest. In this paper, we focus on the personalized tag
recommendation task and try to identify user-preferred, geo-location-specific as well as semantically relevant tags for
a photo by leveraging rich contexts of the freely available community-contributed photos. For users and geo-locations,
we assume they have different preferred tags assigned to a photo, and propose a subspace learning method to
individually uncover the both types of preferences. The goal of our work is to learn a unified subspace shared by the
visual and textual domains to make visual features and textual information of photos comparable. Considering the
visual feature is a lower level representation on semantics than the textual information, we adopt a progressive
learning strategy by additionally introducing an intermediate subspace for the visual domain, and expect it to have
consistent local structure with the textual space. Accordingly, the unified subspace is mapped from the intermediate
subspace and the textual space respectively. We formulate the above learning problems into a united form, and
present an iterative optimization with its convergence proof. Given an untagged photo with its geo-location to a user,
the user-preferred and the geo-location-specific tags are found by the nearest neighbor search in the corresponding
unified spaces. Then we combine the obtained tags and the visual appearance of the photo to discover the
semantically and visually related photos, among which the most frequent tags are used as the recommended tags.
Experiments on a large-scale data set collected from Flickr verify the effectivity of the proposed solution.
Image Processing IEEE 2014 Projects
Title :Photometric Stereo Using Sparse Bayesian Regression for General Diffuse Surfaces
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/photometric-stereo-using-sparse-bayesian-regression-general-diffuse-surfaces
Abstract : Most conventional algorithms for non-Lambertian photometric stereo can be partitioned into two
categories. The first category is built upon stable outlier rejection techniques while assuming a dense Lambertian
structure for the inliers, and thus performance degrades when general diffuse regions are present. The second utilizes
complex reflectance representations and non-linear optimization over pixels to handle non-Lambertian surfaces, but
does not explicitly account for shadows or other forms of corrupting outliers. In this paper, we present a purely
pixel-wise photometric stereo method that stably and efficiently handles various non-Lambertian effects by assuming
that appearances can be decomposed into a sparse, non-diffuse component (e.g., shadows, specularities, etc.) and a
diffuse component represented by a monotonic function of the surface normal and lighting dot-product. This function
is constructed using a piecewise linear approximation to the inverse diffuse model, leading to closed-form estimates
of the surface normals and model parameters in the absence of non-diffuse corruptions. The latter are modeled as
latent variables embedded within a hierarchical Bayesian model such that we may accurately compute the unknown
surface normals while simultaneously separating diffuse from non-diffuse components. Extensive evaluations are
performed that show state-of-the-art performance using both synthetic and real-world images.
Title :Quality Assessment of Stereoscopic 3D Image Compression by Binocular Integration Behaviors
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/quality-assessment-stereoscopic-3d-image-compression-binocular-integration-beh
Abstract : The objective approaches of 3D image quality assessment play a key role for the development of
compression standards and various 3D multimedia applications. The quality assessment of 3D images faces more
new challenges, such as asymmetric stereo compression, depth perception, and virtual view synthesis, than its 2D
counterparts. In addition, the widely used 2D image quality metrics (e.g., PSNR and SSIM) cannot be directly applied
to deal with these newly introduced challenges. This statement can be verified by the low correlation between the
computed objective measures and the subjectively measured mean opinion scores (MOSs), when 3D images are the
tested targets. In order to meet these newly introduced challenges, in this paper, besides traditional 2D image
metrics, the binocular integration behaviors--the binocular combination and the binocular frequency integration, are
utilized as the bases for measuring the quality of stereoscopic 3D images. The effectiveness of the proposed metrics
is verified by conducting subjective evaluations on publicly available stereoscopic image databases. Experimental
results show that significant consistency could be reached between the measured MOS and the proposed metrics, in
which the correlation coefficient between them can go up to 0.88. Furthermore, we found that the proposed metrics
can also address the quality assessment of the synthesized color-plusdepth 3D images well. Therefore, it is our belief
that the binocular integration behaviors are important factors in the development of objective quality assessment for
3D images.
Title :Robust Semi-Automatic Depth Map Generation in Unconstrained Images and Video Sequences for 2D to
Stereoscopic 3D Conversion
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/depth-map-generation-unconstrained-images
Abstract : We describe a system for robustly estimating synthetic depth maps in unconstrained images and videos,
for semi-automatic conversion into stereoscopic 3D. Currently, this process is automatic or done manually by
rotoscopers. Automatic is the least labor intensive, but makes user intervention or error correction difficult. Manual is
the most accurate, but time consuming and costly. Noting the merits of both, a semi-automatic method blends them
together, allowing for faster and accurate conversion. This requires user-defined strokes on the image, or over several
keyframes for video, corresponding to a rough estimate of the depths. After, the rest of the depths are determined,
creating depth maps to generate stereoscopic 3D content, with Depth Image Based Rendering to generate the
artificial views. Depth map estimation can be considered as a multi-label segmentation problem: each class is a
depth. For video, we allow the user to label only the first frame, and we propagate the strokes using computer vision
techniques. We combine the merits of two well-respected segmentation algorithms: Graph Cuts and Random Walks.
The diffusion from Random Walks, with the edge preserving of Graph Cuts should give good results. We generate
good quality content, more suitable for perception, compared to a similar framework.
Title :Sharing Visual Secrets in Single Image Random Dot Stereograms
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/sharing-visual-secrets-single-image-random-dot-stereograms
Abstract : Visual cryptography schemes (VCSs) generate random and meaningless shares to share and protect
secret images. Conventional VCSs suffer from a transmission risk problem because the noise-like shares will raise
the suspicion of attackers and the attackers might intercept the transmission. Previous research has involved in hiding
shared content in halftone shares to reduce these risks, but this method exacerbates the pixel expansion problem and
visual quality degradation problem for recovered images. In this paper, a binocular VCS (BVCS), called the (2,
n)-BVCS, and an encryption algorithm are proposed to hide the shared pixels in the single image random dot
stereograms (SIRDSs). Because the SIRDSs have the same 2D appearance as the conventional shares of a VCS,
this paper tries to use SIRDSs as cover images of the shares of VCSs to reduce the transmission risk of the shares.
The encryption algorithm alters the random dots in the SIRDSs according to the construction rule of the (2, n)-BVCS
to produce nonpixelexpansion shares of the BVCS. Altering the dots in a SIRDS will degrade the visual quality of the
reconstructed 3D objects. Hence, we propose an optimization model that is based on the visual quality requirement of
SIRDSs to develop construction rules for a (2, n)-BVCS that maximize the contrast of the recovered image in the
BVCS.
http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews
Title :Single-Image Superresolution of Natural Stochastic Textures Based on Fractional Brownian Motion
Language : Matlab
Project Link :
http://kasanpro.com/p/matlab/superresolution-natural-stochastic-textures-based-fractional-brownian-motion
Abstract : Texture enhancement presents an ongoing challenge, in spite of the considerable progress made in recent
years. Whereas most of the effort has been devoted so far to enhancement of regular textures, stochastic textures
that are encountered in most natural images, still pose an outstanding problem. The purpose of enhancement of
stochastic textures is to recover details, which were lost during the acquisition of the image. In this paper, a texture
model, based on fractional Brownian motion (fBm), is proposed. The model is global and does not entail using image
patches. The fBm is a self-similar stochastic process. Self-similarity is known to characterize a large class of natural
textures. The fBm-based model is evaluated and a single-image regularized superresolution algorithm is derived. The
proposed algorithm is useful for enhancement of a wide range of textures. Its performance is compared with
single-image superresolution methods and its advantages are highlighted.
Image Processing IEEE 2014 Projects
Title :Weighted KPCA Degree of Homogeneity Amended Nonclassical Receptive Field Inhibition Model for Salient
Contour Extraction in Low-Light-Level Image
Language : Matlab
Project Link : http://kasanpro.com/p/matlab/nonclassical-receptive-field-inhibition-model-salient-contour-extraction
Abstract : The stimulus response of the classical receptive field (CRF) of neuron in primary visual cortex is affected
by its periphery [i.e., non-CRF (nCRF)]. This modulation exerts inhibition, which depends primarily on the correlation
of both visual stimulations. The theory of periphery and center interaction with visual characteristics can be applied in
night vision information processing. In this paper, a weighted kernel principal component analysis (WKPCA) degree of
homogeneity (DH) amended inhibition model inspired by visual perceptual mechanisms is proposed to extract salient
contour from complex natural scene in low-light-level image. The core idea is that multifeature analysis can recognize
the homogeneity in modulation coverage effectively. Computationally, a novel WKPCA algorithm is presented to
eliminate outliers and anomalous distribution in CRF and accomplish principal component analysis precisely. On this
basis, a new concept and computational procedure for DH is defined to evaluate the dissimilarity between periphery
and center comprehensively. Through amending the inhibition from nCRF to CRF by DH, our model can reduce the
interference of noises, suppress details, and textures in homogeneous regions accurately. It helps to further avoid
mutual suppression among inhomogeneous regions and contour elements. This paper provides an improved
computational visual model with high-performance for contour detection from cluttered natural scene in night vision
image.
Title :Region-Based Iterative Reconstruction of Structurally Changing Objects in CT
Language : Java
Project Link : http://kasanpro.com/p/java/region-based-iterative-reconstruction-structurally-changing-objects-ct
Abstract : X-ray computed tomography (CT) is a powerful tool for noninvasive imaging of time-varying objects. In the
past, methods have been proposed to reconstruct images from continuously changing objects. For discretely or
structurally changing objects, however, such methods fail to reconstruct high quality images, mainly because
assumptions about continuity are no longer valid. In this paper, we propose a method to reconstruct structurally
changing objects. Starting from the observation that there exist regions within the scanned object that remain
unchanged over time, we introduce an iterative optimization routine that can automatically determine these regions
and incorporate this knowledge in an algebraic reconstruction method. The proposed algorithm was validated on
simulation data and experimental ?CT data, illustrating its capability to reconstruct structurally changing objects more
accurately in comparison to current techniques.
Title :An Automatic Graph-Based Approach for Artery/Vein Classification in Retinal Images
Language : Java
Project Link : http://kasanpro.com/p/java/an-automatic-graph-based-artery-vein-classification-retinal-images
Abstract : The classification of retinal vessels into artery/vein (A/V) is an important phase for automating the
detection of vascular changes, and for the calculation of characteristic signs associated with several systemic
diseases such as diabetes, hypertension, and other cardiovascular conditions. This paper presents an automatic
approach for A/V classification based on the analysis of a graph extracted from the retinal vasculature. The proposed
method classifies the entire vascular tree deciding on the type of each intersection point (graph nodes) and assigning
one of two labels to each vessel segment (graph links). Final classification of a vessel segment as A/V is performed
through the combination of the graph-based labeling results with a set of intensity features. The results of this
proposed method are compared with manual labeling for three public databases. Accuracy values of 88.3%, 87.4%,
and 89.8% are obtained for the images of the INSPIREAVR, DRIVE, and VICAVR databases, respectively. These
results demonstrate that our method outperforms recent approaches for A/V classification.

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Image Processing Projects for Change Detection and Tumor Analysis

  • 1. Image Processing IEEE 2014 Projects Web : www.kasanpro.com Email : sales@kasanpro.com List Link : http://kasanpro.com/projects-list/image-processing-ieee-2014-projects Title :Building Change Detection Based on Satellite Stereo Imagery and Digital Surface Models Language : Matlab Project Link : http://kasanpro.com/p/matlab/building-change-detection-based-satellite-stereo-imagery-digital-surface-model Abstract : Building change detection is a major issue for urban area monitoring. Due to different imaging conditions and sensor parameters, 2-D information delivered by satellite images from different dates is often not sufficient when dealing with building changes. Moreover, due to the similar spectral characteristics, it is often difficult to distinguish buildings from other man-made constructions, like roads and bridges, during the change detection procedure. Therefore, stereo imagery is of importance to provide the height component which is very helpful in analyzing 3-D building changes. In this paper, we propose a change detection method based on stereo imagery and digital surface models (DSMs) generated with stereo matching methodology and provide a solution by the joint use of height changes and Kullback-Leibler divergence similarity measure between the original images. The Dempster-Shafer fusion theory is adopted to combine these two change indicators to improve the accuracy. In addition, vegetation and shadow classifications are used as no-building change indicators for refining the change detection results. In the end, an object-based building extraction method based on shape features is performed. For evaluation purpose, the proposed method is applied in two test areas, one is in an industrial area in Korea with stereo imagery from the same sensor and the other represents a dense urban area in Germany using stereo imagery from different sensors with different resolutions. Our experimental results confirm the efficiency and high accuracy of the proposed methodology even for different kinds and combinations of stereo images and consequently different DSM qualities. Title :PCA Feature Extraction for Change Detection in Multidimensional Unlabelled Data Language : Matlab Project Link : http://kasanpro.com/p/matlab/pca-feature-extraction-change-detection-multidimensional-unlabelled-data Abstract : When classifiers are deployed in real world applications, it is assumed that the distribution of the incoming data matches the distribution of the data used to train the classifier. This assumption is often incorrect, which necessitates some form of change detection or adaptive classification. While there is a lot of research on change detection based on the classification error, monitored over the course of the operation of the classifier, finding changes in multidimensional unlabelled data is still a challenge. Here we propose to apply principal component analysis (PCA) for feature extraction prior to the change detection. Supported by a theoretical example, we argue that the components with the lowest variance should be retained as the extracted features because they are more likely to be affected by a change. We chose a recently proposed semi-parametric log-likelihood change detection criterion (SPLL) which is sensitive to changes in both mean and variance of the multidimensional distribution. An experiment with 35 data sets and an illustration with a simple video segmentation demonstrate the advantage of using extracted features compared to raw data. Further analysis shows that feature extraction through PCA is beneficial, specifically for data with multiple balanced classes. Title :Remote Sensing Image Segmentation by Combining Spectral and Texture Features Language : Matlab Project Link : http://kasanpro.com/p/matlab/remote-sensing-image-segmentation-combining-spectral-texture-features Abstract : We present a new method for remote sensing image segmentation, which utilizes both spectral and texture information. Linear filters are used to provide enhanced spatial patterns. For each pixel location, we compute combined spectral and texture features using local spectral histograms, which concatenate local histograms of all input bands. We regard each feature as a linear combination of several representative features, each of which corresponds to a segment. Segmentation is given by estimating combination weights, which indicate segment ownership of pixels. We present segmentation solutions where representative features are either known or unknown.
  • 2. We also show that feature dimensions can be greatly reduced via subspace projection. The scale issue is investigated, and an algorithm is presented to automatically select proper scales, which does not require segmentation at multiplescale levels. Experimental results demonstrate the promise of the proposed method. Title :Brain Tumor Detection using Region based Iterative Reconstruction and Segmentation Language : Java Project Link : http://kasanpro.com/p/java/brain-tumor-detection-region-based-iterative-reconstruction-segmentation Abstract : X-ray computed tomography (CT) is a powerful tool for noninvasive imaging of time-varying objects. Identifiying tumors from the CT image is a chalanging one. In this paper we proposed a reconstruct method for CT image and tumors are detected then using edge based segmentation algorithm.. In the past, methods have been proposed to reconstruct images from continuously changing objects. For discretely or structurally changing objects, however, such methods fail to reconstruct high quality images, mainly because assumptions about continuity are no longer valid. In this paper, we propose a method to reconstruct structurally changing objects. Starting from the observation that there exist regions within the scanned object that remain unchanged over time, we introduce an iterative optimization routine that can automatically determine these regions and incorporate this knowledge in an algebraic reconstruction method. And tumor detection was made from the reconstructed image. Title :Automatic graph based approach for prior detection of diabetes and hypertension in retinal images Language : Java Project Link : http://kasanpro.com/p/java/automatic-graph-based-prior-detection-diabetes-hypertension-retinal-images Abstract : Retinal vessels are affected by several systemic diseases, namely diabetes, hypertension, and vascular disorders. In diabetic retinopathy, the blood vessels often show abnormalities at early stages, as well as vessel diameter alterations . Changes in retinal blood vessels, such as significant dilatation and elongation of main arteries, veins, and their branches are also frequently associated with hypertension and other cardiovascular pathologies. The classification of retinal vessels into artery/vein (A/V) is an important phase for automating the detection of vascular changes, and for the calculation of characteristic signs associated with several systemic diseases such as diabetes, hypertension, and other cardiovascular conditions. This paper presents an automatic approach for A/V classification based on the analysis of a graph extracted from the retinal vasculature. The proposed method classifies the entire vascular tree deciding on the type of each intersection point (graph nodes) and assigning one of two labels to each vessel segment (graph links). Final classification of a vessel segment as A/V is performed through the combination of the graph-based labeling results with a set of intensity features. The features were extracted, including exudates, bifurcation angle, artery-to-veins diameter ratio, mean artery and veins diameters, form and size of optic disc, and vessel tortuosity. And the identification of diabetes are made by the rule based conditions. Image Processing IEEE 2014 Projects Title :A Compressive Sensing based Secure Watermark Detection and Privacy Preserving Storage Framework Language : Matlab Project Link : http://kasanpro.com/p/matlab/secure-watermark-detection-privacy-preserving-storage-framework Abstract : Privacy is a critical issue when the data owners outsource data storage or processing to a third party computing service, such as the cloud. In this paper, we identify a cloud computing application scenario that requires simultaneously performing secure watermark detection and privacy preserving multimedia data storage. We then propose a compressive sensing (CS)-based framework using secure multiparty computation (MPC) protocols to address such a requirement. In our framework, the multimedia data and secret watermark pattern are presented to the cloud for secure watermark detection in a CS domain to protect the privacy. During CS transformation, the privacy of the CS matrix and the watermark pattern is protected by the MPC protocols under the semi-honest security model. We derive the expected watermark detection performance in the CS domain, given the target image, watermark pattern, and the size of the CS matrix (but without the CS matrix itself). The correctness of the derived performance has been validated by our experiments. Our theoretical analysis and experimental results show that secure watermark detection in the CS domain is feasible. Our framework can also be extended to other collaborative secure signal processing and data-mining applications in the cloud. Title :A New Iterative Triclass Thresholding Technique in Image Segmentation Language : Matlab Project Link : http://kasanpro.com/p/matlab/new-iterative-triclass-thresholding-technique-image-segmentation
  • 3. Abstract : We present a new method in image segmentation that is based on Otsu's method but iteratively searches for subregions of the image for segmentation, instead of treating the full image as a whole region for processing. The iterative method starts with Otsu's threshold and computes the mean values of the two classes as separated by the threshold. Based on the Otsu's threshold and the two mean values, the method separates the image into three classes instead of two as the standard Otsu's method does. The first two classes are determined as the foreground and background and they will not be processed further. The third class is denoted as a to-be-determined (TBD) region that is processed at next iteration. At the succeeding iteration, Otsu's method is applied on the TBD region to calculate a new threshold and two class means and the TBD region is again separated into three classes, namely, foreground, background, and a new TBD region, which by definition is smaller than the previous TBD regions. Then, the new TBD region is processed in the similar manner. The process stops when the Otsu's thresholds calculated between two iterations is less than a preset threshold. Then, all the intermediate foreground and background regions are, respectively, combined to create the final segmentation result. Tests on synthetic and real images showed that the new iterative method can achieve better performance than the standard Otsu's method in many challenging cases, such as identifying weak objects and revealing fine structures of complex objects while the added computational cost is minimal. Title :As-Projective-As-Possible Image Stitching with Moving DLT Language : Matlab Project Link : http://kasanpro.com/p/matlab/as-projective-as-possible-image-stitching-moving-dlt Abstract : We investigate projective estimation under model inadequacies, i.e., when the underpinning assumptions of the projective model are not fully satisfied by the data. We focus on the task of image stitching which is customarily solved by estimating a projective warp -- a model that is justified when the scene is planar or when the views differ purely by rotation. Such conditions are easily violated in practice, and this yields stitching results with ghosting artefacts that necessitate the usage of deghosting algorithms. To this end we propose as-projective-as-possible warps, i.e., warps that aim to be globally projective, yet allow local non-projective deviations to account for violations to the assumed imaging conditions. Based on a novel estimation technique called Moving Direct Linear Transformation (Moving DLT), our method seamlessly bridges image regions that are inconsistent with the projective model. The result is highly accurate image stitching, with significantly reduced ghosting effects, thus lowering the dependency on post hoc deghosting. http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews Title :Captcha as Graphical Passwords--A New Security Primitive Based on Hard AI Problems Language : Matlab Project Link : http://kasanpro.com/p/matlab/captcha-graphical-password Abstract : Many security primitives are based on hard mathematical problems. Using hard AI problems for security is emerging as an exciting new paradigm, but has been underexplored. In this paper, we present a new security primitive based on hard AI problems, namely, a novel family of graphical password systems built on top of Captcha technology, which we call Captcha as graphical passwords (CaRP). CaRP is both a Captcha and a graphical password scheme. CaRP addresses a number of security problems altogether, such as online guessing attacks, relay attacks, and, if combined with dual-view technologies, shoulder-surfing attacks. Notably, a CaRP password can be found only probabilistically by automatic online guessing attacks even if the password is in the search set. CaRP also offers a novel approach to address the well-known image hotspot problem in popular graphical password systems, such as PassPoints, that often leads to weak password choices. CaRP is not a panacea, but it offers reasonable security and usability and appears to fit well with some practical applications for improving online security. Title :Corruptive Artifacts Suppression for Example-Based Color Transfer Language : Matlab Project Link : http://kasanpro.com/p/matlab/corruptive-artifacts-suppression-example-based-color-transfer Abstract : Example-based color transfer is a critical operation in image editing but easily suffers from some corruptive artifacts in themapping process. In this paper,we propose a novel unified color transfer framework with corruptive artifacts suppression, which performs iterative probabilistic color mapping with self-learning filtering scheme and multiscale detail manipulation scheme inminimizing the normalized Kullback-Leibler distance. First, an iterative probabilistic color mapping is applied to construct the mapping relationship between the reference and target images. Then, a self-learning filtering scheme is applied into the transfer process to prevent from artifacts and extract details. The transferred output and the extracted multi-levels details are integrated by the measurement minimization to yield
  • 4. the final result. Our framework achieves a sound grain suppression, color fidelity and detail appearance seamlessly. For demonstration, a series of objective and subjective measurements are used to evaluate the quality in color transfer. Finally, a few extended applications are implemented to show the applicability of this framework. Image Processing IEEE 2014 Projects Title :Fingerprint Compression Based on Sparse Representation Language : Matlab Project Link : http://kasanpro.com/p/matlab/fingerprint-compression-based-sparse-representation Abstract : A new fingerprint compression algorithm based on sparse representation is introduced. Obtaining an overcomplete dictionary from a set of fingerprint patches allows us to represent them as a sparse linear combination of dictionary atoms. In the algorithm, we first construct a dictionary for predefined fingerprint image patches. For a new given fingerprint images, represent its patches according to the dictionary by computing l0-minimization and then quantize and encode the representation. In this paper, we consider the effect of various factors on compression results. Three groups of fingerprint images are tested. The experiments demonstrate that our algorithm is efficient compared with several competing compression techniques (JPEG, JPEG 2000, andWSQ), especially at high compression ratios. The experiments also illustrate that the proposed algorithm is robust to extract minutiae. Title :How to Estimate the Regularization Parameter for Spectral Regression Discriminant Analysis and its Kernel Version? Language : Matlab Project Link : http://kasanpro.com/p/matlab/regularization-parameter-spectral-regression-discriminant-analysis Abstract : Spectral regression discriminant analysis (SRDA) has recently been proposed as an efficient solution to large-scale subspace learning problems. There is a tunable regularization parameter in SRDA, which is critical to algorithm performance. However, how to automatically set this parameter has not been well solved until now. So this regularization parameter was only set to be a constant in SRDA, which is obviously suboptimal. This paper proposes to automatically estimate the optimal regularization parameter of SRDA based on the perturbation linear discriminant analysis (PLDA). In addition, two parameter estimation methods for the kernel version of SRDA are also developed. One is derived from the method of optimal regularization parameter estimation for SRDA. The other is to utilize the kernel version of PLDA. Experiments on a number of publicly available databases demonstrate the effectiveness of the proposed methods for face recognition, spoken letter recognition, handwritten digit recognition, and text categorization. Title :Image Classification Using Multiscale Information Fusion Based on Saliency Driven Nonlinear Diffusion Filtering Language : Matlab Project Link : http://kasanpro.com/p/matlab/image-classification-based-fusion-diffusion-filtering Abstract : In this paper, we propose saliency driven image multiscale nonlinear diffusion filtering. The resulting scale space in general preserves or even enhances semantically important structures such as edges, lines, or flow-like structures in the foreground, and inhibits and smoothes clutter in the background. The image is classified using multiscale information fusion based on the original image, the image at the final scale at which the diffusion process converges, and the image at a midscale. Our algorithm emphasizes the foreground features, which are important for image classification. The background image regions, whether considered as contexts of the foreground or noise to the foreground, can be globally handled by fusing information from different scales. Experimental tests of the effectiveness of the multiscale space for the image classification are conducted on the following publicly available datasets: 1) the PASCAL 2005 dataset; 2) the Oxford 102 flowers dataset; and 3) the Oxford 17 flowers dataset, with high classification rates. Title :LBP-Based Edge-Texture Features for Object Recognition Language : Matlab Project Link : http://kasanpro.com/p/matlab/lbp-based-edge-texture-features-object-recognition Abstract : This paper proposes two sets of novel edge-texture features, Discriminative Robust Local Binary Pattern (DRLBP) and Ternary Pattern (DRLTP), for object recognition. By investigating the limitations of Local Binary Pattern (LBP), Local Ternary Pattern (LTP) and Robust LBP (RLBP), DRLBP and DRLTP are proposed as new features. They solve the problem of discrimination between a bright object against a dark background and vice-versa inherent
  • 5. in LBP and LTP. DRLBP also resolves the problem of RLBP whereby LBP codes and their complements in the same block are mapped to the same code. Furthermore, the proposed features retain contrast information necessary for proper representation of object contours that LBP, LTP, and RLBP discard. Our proposed features are tested on seven challenging data sets: INRIA Human, Caltech Pedestrian, UIUC Car, Caltech 101, Caltech 256, Brodatz, and KTH-TIPS2- a. Results demonstrate that the proposed features outperform the compared approaches on most data sets. Title :Learning Layouts for Single-Page Graphic Designs Language : Matlab Project Link : http://kasanpro.com/p/matlab/learning-layouts-single-page-graphic-designs Abstract : This paper presents an approach for automatically creating graphic design layouts using a new energy-based model derived from design principles. The model includes several new algorithm for analyzing graphic designs, including the prediction of perceived importance, alignment detection, and hierarchical segmentation. Given the model, we use optimization to synthesize new layouts for a variety of single-page graphic designs. Model parameters are learned with Nonlinear Inverse Optimization (NIO) from a small number of example layouts. To demonstrate our approach, we show result for application including generation design layouts in various styles, retargeting designs to new sizes, and improving existing designs. We also compare our automatic results with designs created using crowdsourcing and show that our approach performs slightly better than novice designers. Image Processing IEEE 2014 Projects Title :Localization of License Plate Number Using Dynamic Image Processing Techniques And Genetic Algorithms Language : Matlab Project Link : http://kasanpro.com/p/matlab/license-plate-number-localization-using-image-processing-and-genetic-algorithms Abstract : In this research, a design of a new genetic algorithm (GA) is introduced to detect the locations of the License Plate (LP) symbols. An adaptive threshold method has been applied to overcome the dynamic changes of illumination conditions when converting the image into binary. Connected component analysis technique (CCAT) is used to detect candidate objects inside the unknown image. A scale-invariant Geometric Relationship Matrix (GRM) has been introduced to model the symbols layout in any LP which simplifies system adaptability when applied in different countries. Moreover, two new crossover operators, based on sorting, have been introduced which greatly improved the convergence speed of the system. Most of CCAT problems such as touching or broken bodies have been minimized by modifying the GA to perform partial match until reaching to an acceptable fitness value. The system has been implemented using MATLAB and various image samples have been experimented to verify the distinction of the proposed system. Encouraging results with 98.4% overall accuracy have been reported for two different datasets having variability in orientation, scaling, plate location, illumination and complex background. Examples of distorted plate images were successfully detected due to the independency on the shape, color, or location of the plate. http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews Title :Model-Based Edge Detector for Spectral Imagery Using Sparse Spatiospectral Masks Language : Matlab Project Link : http://kasanpro.com/p/matlab/model-based-edge-detector-spectral-imagery-using-sparse-spatiospectral-masks Abstract : Two model-based algorithms for edge detection in spectral imagery are developed that specifically target capturing intrinsic features such as isoluminant edges that are characterized by a jump in color but not in intensity. Given prior knowledge of the classes of reflectance or emittance spectra associated with candidate objects in a scene, a small set of spectral-band ratios, which most profoundly identify the edge between each pair of materials, are selected to define a edge signature. The bands that form the edge signature are fed into a spatial mask, producing a sparse joint spatiospectral nonlinear operator. The first algorithm achieves edge detection for every material pair by matching the response of the operator at every pixel with the edge signature for the pair of materials. The second algorithm is a classifier-enhanced extension of the first algorithm that adaptively accentuates distinctive features before applying the spatiospectral operator. Both algorithms are extensively verified using spectral imagery from the airborne hyperspectral imager and from a dots-in-a-well midinfrared imager. In both cases, the multicolor gradient (MCG) and the hyperspectral/spatial detection of edges (HySPADE) edge detectors are used as a
  • 6. benchmark for comparison. The results demonstrate that the proposed algorithms outperform the MCG and HySPADE edge detectors in accuracy, especially when isoluminant edges are present. By requiring only a few bands as input to the spatiospectral operator, the algorithms enable significant levels of data compression in band selection. In the presented examples, the required operations per pixel are reduced by a factor of 71 with respect to those required by the MCG edge detector. Title :Modeling of Speaking Rate Influences on Mandarin Speech Prosody and Its Application to Speaking Rate-controlled TTS Language : Matlab Project Link : http://kasanpro.com/p/matlab/application-speaking-rate-controlled-tts Abstract : A new data-driven approach to building a speaking rate-dependent hierarchical prosodic model (SR-HPM), directly from a large prosody-unlabeled speech database containing utterances of various speaking rates, to describe the influences of speaking rate on Mandarin speech prosody is proposed. It is an extended version of the existing HPM model which contains 12 sub-models to describe various relationships of prosodic-acoustic features of speech signal, linguistic features of the associated text, and prosodic tags representing the prosodic structure of speech. Two main modifications are suggested. One is designing proper normalization functions from the statistics of the whole database to compensate the influences of speaking rate on all prosodic-acoustic features. Another is modifying the HPM training to let its parameters be speaking-rate dependent. Experimental results on a large Mandarin read speech corpus showed that the parameters of the SR-HPM together with these feature normalization functions interpreted the effects of speaking rate onMandarin speech prosody very well. An application of the SR-HPM to design and implement a speaking rate-controlledMandarin TTS system is demonstrated. The system can generate natural synthetic speech for any given speaking rate in awide range of 3.4-6.8 syllables/sec.Two subjective tests,MOSand preference test,were conducted to compare the proposed system with the popular HTS system. TheMOS scores of the proposed system were in the range of 3.58-3.83 for eight different speaking rates, while they were in 3.09-3.43 for HTS. Besides, the proposed system had higher preference scores (49.8%-79.6%) than those (9.8%-30.7%) ofHTS. This confirmed the effectiveness of the speaking rate control method of the proposed TTS system. Title :Multisensor Fusion-Based Concurrent Environment Mapping and Moving Object Detection for Intelligent Service Robotics Language : Matlab Project Link : http://kasanpro.com/p/matlab/moving-object-detection-intelligent-service-robotics Abstract : Intelligent service robot development is an important and critical issue for human community applications. With the diverse and complex service needs, the perception and navigation are essential subjects. This investigation focuses on the synergistic fusion of multiple sensors for an intelligent service robot that not only performs self-localization and mapping but also detects moving objects or people in the building it services. First of all, a new augmented approach of graph-based optimal estimation was derived for concurrent robot postures and moving object trajectory estimate. Moreover, all the moving object detection issues of a robot's indoor navigation are divided and conquered via multisensor fusion methodologies. From bottom to up, the estimation fusion methods are tactically utilized to get a more precise result than the one from only the laser ranger or stereo vision. Furthermore, for solving the consistent association problem of moving objects, a covariance area intersection belief assignment is applied for motion state evaluation and the complementary evidences such as kinematics and vision features are both synergized together to enhance the association efficiency with the evidence fusion method. The proof of concept with experiments has been successfully demonstrated and analyzed. Title :Personalized Geo-Specific Tag Recommendation for Photos on Social Websites Language : Matlab Project Link : http://kasanpro.com/p/matlab/personalized-geo-specific-tag-recommendation-photos-social-websites Abstract : Social tagging becomes increasingly important to organize and search large-scale community-contributed photos on social websites. To facilitate generating high-quality social tags, tag recommendation by automatically assigning relevant tags to photos draws particular research interest. In this paper, we focus on the personalized tag recommendation task and try to identify user-preferred, geo-location-specific as well as semantically relevant tags for a photo by leveraging rich contexts of the freely available community-contributed photos. For users and geo-locations, we assume they have different preferred tags assigned to a photo, and propose a subspace learning method to individually uncover the both types of preferences. The goal of our work is to learn a unified subspace shared by the visual and textual domains to make visual features and textual information of photos comparable. Considering the visual feature is a lower level representation on semantics than the textual information, we adopt a progressive learning strategy by additionally introducing an intermediate subspace for the visual domain, and expect it to have consistent local structure with the textual space. Accordingly, the unified subspace is mapped from the intermediate subspace and the textual space respectively. We formulate the above learning problems into a united form, and
  • 7. present an iterative optimization with its convergence proof. Given an untagged photo with its geo-location to a user, the user-preferred and the geo-location-specific tags are found by the nearest neighbor search in the corresponding unified spaces. Then we combine the obtained tags and the visual appearance of the photo to discover the semantically and visually related photos, among which the most frequent tags are used as the recommended tags. Experiments on a large-scale data set collected from Flickr verify the effectivity of the proposed solution. Image Processing IEEE 2014 Projects Title :Photometric Stereo Using Sparse Bayesian Regression for General Diffuse Surfaces Language : Matlab Project Link : http://kasanpro.com/p/matlab/photometric-stereo-using-sparse-bayesian-regression-general-diffuse-surfaces Abstract : Most conventional algorithms for non-Lambertian photometric stereo can be partitioned into two categories. The first category is built upon stable outlier rejection techniques while assuming a dense Lambertian structure for the inliers, and thus performance degrades when general diffuse regions are present. The second utilizes complex reflectance representations and non-linear optimization over pixels to handle non-Lambertian surfaces, but does not explicitly account for shadows or other forms of corrupting outliers. In this paper, we present a purely pixel-wise photometric stereo method that stably and efficiently handles various non-Lambertian effects by assuming that appearances can be decomposed into a sparse, non-diffuse component (e.g., shadows, specularities, etc.) and a diffuse component represented by a monotonic function of the surface normal and lighting dot-product. This function is constructed using a piecewise linear approximation to the inverse diffuse model, leading to closed-form estimates of the surface normals and model parameters in the absence of non-diffuse corruptions. The latter are modeled as latent variables embedded within a hierarchical Bayesian model such that we may accurately compute the unknown surface normals while simultaneously separating diffuse from non-diffuse components. Extensive evaluations are performed that show state-of-the-art performance using both synthetic and real-world images. Title :Quality Assessment of Stereoscopic 3D Image Compression by Binocular Integration Behaviors Language : Matlab Project Link : http://kasanpro.com/p/matlab/quality-assessment-stereoscopic-3d-image-compression-binocular-integration-beh Abstract : The objective approaches of 3D image quality assessment play a key role for the development of compression standards and various 3D multimedia applications. The quality assessment of 3D images faces more new challenges, such as asymmetric stereo compression, depth perception, and virtual view synthesis, than its 2D counterparts. In addition, the widely used 2D image quality metrics (e.g., PSNR and SSIM) cannot be directly applied to deal with these newly introduced challenges. This statement can be verified by the low correlation between the computed objective measures and the subjectively measured mean opinion scores (MOSs), when 3D images are the tested targets. In order to meet these newly introduced challenges, in this paper, besides traditional 2D image metrics, the binocular integration behaviors--the binocular combination and the binocular frequency integration, are utilized as the bases for measuring the quality of stereoscopic 3D images. The effectiveness of the proposed metrics is verified by conducting subjective evaluations on publicly available stereoscopic image databases. Experimental results show that significant consistency could be reached between the measured MOS and the proposed metrics, in which the correlation coefficient between them can go up to 0.88. Furthermore, we found that the proposed metrics can also address the quality assessment of the synthesized color-plusdepth 3D images well. Therefore, it is our belief that the binocular integration behaviors are important factors in the development of objective quality assessment for 3D images. Title :Robust Semi-Automatic Depth Map Generation in Unconstrained Images and Video Sequences for 2D to Stereoscopic 3D Conversion Language : Matlab Project Link : http://kasanpro.com/p/matlab/depth-map-generation-unconstrained-images Abstract : We describe a system for robustly estimating synthetic depth maps in unconstrained images and videos, for semi-automatic conversion into stereoscopic 3D. Currently, this process is automatic or done manually by rotoscopers. Automatic is the least labor intensive, but makes user intervention or error correction difficult. Manual is the most accurate, but time consuming and costly. Noting the merits of both, a semi-automatic method blends them together, allowing for faster and accurate conversion. This requires user-defined strokes on the image, or over several keyframes for video, corresponding to a rough estimate of the depths. After, the rest of the depths are determined, creating depth maps to generate stereoscopic 3D content, with Depth Image Based Rendering to generate the artificial views. Depth map estimation can be considered as a multi-label segmentation problem: each class is a depth. For video, we allow the user to label only the first frame, and we propagate the strokes using computer vision
  • 8. techniques. We combine the merits of two well-respected segmentation algorithms: Graph Cuts and Random Walks. The diffusion from Random Walks, with the edge preserving of Graph Cuts should give good results. We generate good quality content, more suitable for perception, compared to a similar framework. Title :Sharing Visual Secrets in Single Image Random Dot Stereograms Language : Matlab Project Link : http://kasanpro.com/p/matlab/sharing-visual-secrets-single-image-random-dot-stereograms Abstract : Visual cryptography schemes (VCSs) generate random and meaningless shares to share and protect secret images. Conventional VCSs suffer from a transmission risk problem because the noise-like shares will raise the suspicion of attackers and the attackers might intercept the transmission. Previous research has involved in hiding shared content in halftone shares to reduce these risks, but this method exacerbates the pixel expansion problem and visual quality degradation problem for recovered images. In this paper, a binocular VCS (BVCS), called the (2, n)-BVCS, and an encryption algorithm are proposed to hide the shared pixels in the single image random dot stereograms (SIRDSs). Because the SIRDSs have the same 2D appearance as the conventional shares of a VCS, this paper tries to use SIRDSs as cover images of the shares of VCSs to reduce the transmission risk of the shares. The encryption algorithm alters the random dots in the SIRDSs according to the construction rule of the (2, n)-BVCS to produce nonpixelexpansion shares of the BVCS. Altering the dots in a SIRDS will degrade the visual quality of the reconstructed 3D objects. Hence, we propose an optimization model that is based on the visual quality requirement of SIRDSs to develop construction rules for a (2, n)-BVCS that maximize the contrast of the recovered image in the BVCS. http://kasanpro.com/ieee/final-year-project-center-kanniyakumari-reviews Title :Single-Image Superresolution of Natural Stochastic Textures Based on Fractional Brownian Motion Language : Matlab Project Link : http://kasanpro.com/p/matlab/superresolution-natural-stochastic-textures-based-fractional-brownian-motion Abstract : Texture enhancement presents an ongoing challenge, in spite of the considerable progress made in recent years. Whereas most of the effort has been devoted so far to enhancement of regular textures, stochastic textures that are encountered in most natural images, still pose an outstanding problem. The purpose of enhancement of stochastic textures is to recover details, which were lost during the acquisition of the image. In this paper, a texture model, based on fractional Brownian motion (fBm), is proposed. The model is global and does not entail using image patches. The fBm is a self-similar stochastic process. Self-similarity is known to characterize a large class of natural textures. The fBm-based model is evaluated and a single-image regularized superresolution algorithm is derived. The proposed algorithm is useful for enhancement of a wide range of textures. Its performance is compared with single-image superresolution methods and its advantages are highlighted. Image Processing IEEE 2014 Projects Title :Weighted KPCA Degree of Homogeneity Amended Nonclassical Receptive Field Inhibition Model for Salient Contour Extraction in Low-Light-Level Image Language : Matlab Project Link : http://kasanpro.com/p/matlab/nonclassical-receptive-field-inhibition-model-salient-contour-extraction Abstract : The stimulus response of the classical receptive field (CRF) of neuron in primary visual cortex is affected by its periphery [i.e., non-CRF (nCRF)]. This modulation exerts inhibition, which depends primarily on the correlation of both visual stimulations. The theory of periphery and center interaction with visual characteristics can be applied in night vision information processing. In this paper, a weighted kernel principal component analysis (WKPCA) degree of homogeneity (DH) amended inhibition model inspired by visual perceptual mechanisms is proposed to extract salient contour from complex natural scene in low-light-level image. The core idea is that multifeature analysis can recognize the homogeneity in modulation coverage effectively. Computationally, a novel WKPCA algorithm is presented to eliminate outliers and anomalous distribution in CRF and accomplish principal component analysis precisely. On this basis, a new concept and computational procedure for DH is defined to evaluate the dissimilarity between periphery and center comprehensively. Through amending the inhibition from nCRF to CRF by DH, our model can reduce the interference of noises, suppress details, and textures in homogeneous regions accurately. It helps to further avoid mutual suppression among inhomogeneous regions and contour elements. This paper provides an improved computational visual model with high-performance for contour detection from cluttered natural scene in night vision
  • 9. image. Title :Region-Based Iterative Reconstruction of Structurally Changing Objects in CT Language : Java Project Link : http://kasanpro.com/p/java/region-based-iterative-reconstruction-structurally-changing-objects-ct Abstract : X-ray computed tomography (CT) is a powerful tool for noninvasive imaging of time-varying objects. In the past, methods have been proposed to reconstruct images from continuously changing objects. For discretely or structurally changing objects, however, such methods fail to reconstruct high quality images, mainly because assumptions about continuity are no longer valid. In this paper, we propose a method to reconstruct structurally changing objects. Starting from the observation that there exist regions within the scanned object that remain unchanged over time, we introduce an iterative optimization routine that can automatically determine these regions and incorporate this knowledge in an algebraic reconstruction method. The proposed algorithm was validated on simulation data and experimental ?CT data, illustrating its capability to reconstruct structurally changing objects more accurately in comparison to current techniques. Title :An Automatic Graph-Based Approach for Artery/Vein Classification in Retinal Images Language : Java Project Link : http://kasanpro.com/p/java/an-automatic-graph-based-artery-vein-classification-retinal-images Abstract : The classification of retinal vessels into artery/vein (A/V) is an important phase for automating the detection of vascular changes, and for the calculation of characteristic signs associated with several systemic diseases such as diabetes, hypertension, and other cardiovascular conditions. This paper presents an automatic approach for A/V classification based on the analysis of a graph extracted from the retinal vasculature. The proposed method classifies the entire vascular tree deciding on the type of each intersection point (graph nodes) and assigning one of two labels to each vessel segment (graph links). Final classification of a vessel segment as A/V is performed through the combination of the graph-based labeling results with a set of intensity features. The results of this proposed method are compared with manual labeling for three public databases. Accuracy values of 88.3%, 87.4%, and 89.8% are obtained for the images of the INSPIREAVR, DRIVE, and VICAVR databases, respectively. These results demonstrate that our method outperforms recent approaches for A/V classification.