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BRINT: Binary Rotation Invariant and Noise Tolerant 
Texture Classification 
ABSTRACT: 
In this paper, we propose a simple, efficient, yet robust multiresolution approach to 
texture classification—binary rotation invariant and noise tolerant (BRINT). The 
proposed approach is very fast to build, very compact while remaining robust to 
illumination variations, rotation changes, and noise. We develop a novel and 
simple strategy to compute a local binary descriptor based on the conventional 
local binary pattern (LBP) approach, preserving the advantageous characteristics of 
uniform LBP. Points are sampled in a circular neighborhood, but keeping the 
number of bins in a single-scale LBP histogram constant and small, such that 
arbitrarily large circular neighborhoods can be sampled and compactly encoded 
over a number of scales. There is no necessity to learn a texton dictionary, as in 
methods based on clustering, and no tuning of parameters is required to deal with 
different data sets. Extensive experimental results on representative texture 
databases show that the proposed BRINT not only demonstrates superior 
performance to a number of recent state-of-the-art LBP variants under normal 
conditions, but also performs significantly and consistently better in presence of
noise due to its high distinctiveness and robustness. This noise robustness 
characteristic of the proposed BRINT is evaluated quantitatively with different 
artificially generated types and levels of noise (including Gaussian, salt and 
pepper, and speckle noise) in natural texture images. 
EXISTING SYSTEM: 
Among local texture descriptors, LBP has emerged as one of the most prominent 
and has attracted increasing attention in the field of image processing and 
computer visiondue to its outstanding advantages: (1) ease of implementation, (2) 
no need for pre-training, (3) invariance to monotonic illumination changes, and (4) 
low computational complexity, making LBP a preferred choice for many 
applications. Although originally proposed for texture analysis, the LBP method 
has been successfully applied to many diverse areas of image processing: dynamic 
texture recognition, remote sensing, fingerprint matching, visual inspection, image 
retrieval, biomedical image analysis, face image analysis, motion analysis, edge 
detection, and environment modeling. Consequently many LBP variants are 
present in the recent literature.
DISADVANTAGES OF EXISTING SYSTEM: 
 Although significant progress has been made, most LBP variants still 
have prominent limitations, mostly the sensitivity to noise, and the 
limiting of LBP variants to three scales, failing to capture long range 
texture information. 
 Although some efforts have been made to include complementary 
filtering techniques, these increase the computational complexity, 
running counter to the computational efficiency property of the LBP 
method. 
PROPOSED SYSTEM: 
In this paper, we propose a novel, computationally simple approach, the Binary 
Rotation Invariant and Noise Tolerant (BRINT) descriptor, Motivated by the recent 
CLBP approach, which was proposed by Guo et al. to include both the signs and 
the magnitudes components between a given central pixel and its neighbors and the 
center pixel intensity in order to improve the discriminative power of the original 
LBP operator, we extend BRINT to include a magnitude component and to code 
the intensity of the center pixel. Based on these methods we develop a 
discriminative and robust combination for multi- resolution analysis, which will be
demonstrated experimentally to perform robustly against changes in gray-scale, 
rotation, and noise without suffering any performance degradation under noise-free 
situations. 
ADVANTAGES OF PROPOSED SYSTEM: 
 It is highly discriminative, has low computational complexity, is highly 
robust to noise and rotation, and allows for compactly encoding a number of 
scales and arbitrarily large circular neighborhoods. At the feature extraction 
stage there is no pre-learning process and no additional parameters to be 
learned.
SYSTEM ARCHITECTURE: 
SYSTEM REQUIREMENTS: 
HARDWARE REQUIREMENTS: 
 System : Pentium IV 2.4 GHz.
 Hard Disk : 40 GB. 
 Floppy Drive : 1.44 Mb. 
 Monitor : 15 VGA Colour. 
 Mouse : Logitech. 
 Ram : 512 Mb. 
SOFTWARE REQUIREMENTS: 
 Operating system : Windows XP/7. 
 Coding Language : MATLAB 
 Tool : MATLAB R 2007B 
REFERENCE: 
Li Liu, Member, IEEE, Yunli Long, Paul W. Fieguth, Member, IEEE, Songyang 
Lao, and Guoying Zhao, Senior Member, IEEE ,“BRINT: Binary Rotation 
Invariant and Noise Tolerant Texture Classification”, IEEE TRANSACTIONS 
ON IMAGE PROCESSING, VOL. 23, NO. 7, JULY 2014.

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JPN1418 PSR: A Lightweight Proactive Source Routing Protocol For Mobile Ad H...
 
JPN1417 AASR: An Authenticated Anonymous Secure Routing Protocol for MANETs ...
JPN1417  AASR: An Authenticated Anonymous Secure Routing Protocol for MANETs ...JPN1417  AASR: An Authenticated Anonymous Secure Routing Protocol for MANETs ...
JPN1417 AASR: An Authenticated Anonymous Secure Routing Protocol for MANETs ...
 
JPN1416 Sleep Scheduling for Geographic Routing in Duty-Cycled Mobile Sensor...
JPN1416  Sleep Scheduling for Geographic Routing in Duty-Cycled Mobile Sensor...JPN1416  Sleep Scheduling for Geographic Routing in Duty-Cycled Mobile Sensor...
JPN1416 Sleep Scheduling for Geographic Routing in Duty-Cycled Mobile Sensor...
 
JPN1415 R3E: Reliable Reactive Routing Enhancement for Wireless Sensor Netw...
JPN1415   R3E: Reliable Reactive Routing Enhancement for Wireless Sensor Netw...JPN1415   R3E: Reliable Reactive Routing Enhancement for Wireless Sensor Netw...
JPN1415 R3E: Reliable Reactive Routing Enhancement for Wireless Sensor Netw...
 
JPN1411 Secure Continuous Aggregation in Wireless Sensor Networks
JPN1411   Secure Continuous Aggregation in Wireless Sensor NetworksJPN1411   Secure Continuous Aggregation in Wireless Sensor Networks
JPN1411 Secure Continuous Aggregation in Wireless Sensor Networks
 
JPN1414 Distributed Deployment Algorithms for Improved Coverage in a Networ...
JPN1414   Distributed Deployment Algorithms for Improved Coverage in a Networ...JPN1414   Distributed Deployment Algorithms for Improved Coverage in a Networ...
JPN1414 Distributed Deployment Algorithms for Improved Coverage in a Networ...
 
JPN1413 An Energy-Balanced Routing Method Based on Forward-Aware Factor for...
JPN1413   An Energy-Balanced Routing Method Based on Forward-Aware Factor for...JPN1413   An Energy-Balanced Routing Method Based on Forward-Aware Factor for...
JPN1413 An Energy-Balanced Routing Method Based on Forward-Aware Factor for...
 
JPN1412 Transmission-Efficient Clustering Method for Wireless Sensor Networ...
JPN1412   Transmission-Efficient Clustering Method for Wireless Sensor Networ...JPN1412   Transmission-Efficient Clustering Method for Wireless Sensor Networ...
JPN1412 Transmission-Efficient Clustering Method for Wireless Sensor Networ...
 
JPN1410 Secure and Efficient Data Transmission for Cluster-Based Wireless Se...
JPN1410  Secure and Efficient Data Transmission for Cluster-Based Wireless Se...JPN1410  Secure and Efficient Data Transmission for Cluster-Based Wireless Se...
JPN1410 Secure and Efficient Data Transmission for Cluster-Based Wireless Se...
 
JPN1409 Neighbor Table Based Shortcut Tree Routing in ZigBee Wireless Networks
JPN1409  Neighbor Table Based Shortcut Tree Routing in ZigBee Wireless NetworksJPN1409  Neighbor Table Based Shortcut Tree Routing in ZigBee Wireless Networks
JPN1409 Neighbor Table Based Shortcut Tree Routing in ZigBee Wireless Networks
 
JPN1408 Hop-by-Hop Message Authentication and Source Privacy in Wireless Sen...
JPN1408  Hop-by-Hop Message Authentication and Source Privacy in Wireless Sen...JPN1408  Hop-by-Hop Message Authentication and Source Privacy in Wireless Sen...
JPN1408 Hop-by-Hop Message Authentication and Source Privacy in Wireless Sen...
 
JPN1406 Snapshot and Continuous Data Collection in Probabilistic Wireless S...
JPN1406   Snapshot and Continuous Data Collection in Probabilistic Wireless S...JPN1406   Snapshot and Continuous Data Collection in Probabilistic Wireless S...
JPN1406 Snapshot and Continuous Data Collection in Probabilistic Wireless S...
 
JPN1405 RBTP: Low-Power Mobile Discovery Protocol through Recursive Binary T...
JPN1405  RBTP: Low-Power Mobile Discovery Protocol through Recursive Binary T...JPN1405  RBTP: Low-Power Mobile Discovery Protocol through Recursive Binary T...
JPN1405 RBTP: Low-Power Mobile Discovery Protocol through Recursive Binary T...
 
JPN1404 Optimal Multicast Capacity and Delay Tradeoffs in MANETs
JPN1404 Optimal Multicast Capacity and Delay Tradeoffs in MANETsJPN1404 Optimal Multicast Capacity and Delay Tradeoffs in MANETs
JPN1404 Optimal Multicast Capacity and Delay Tradeoffs in MANETs
 
JPM1410 Images as Occlusions of Textures: A Framework for Segmentation
JPM1410   Images as Occlusions of Textures: A Framework for SegmentationJPM1410   Images as Occlusions of Textures: A Framework for Segmentation
JPM1410 Images as Occlusions of Textures: A Framework for Segmentation
 
JPM1407 Exposing Digital Image Forgeries by Illumination Color Classification
JPM1407   Exposing Digital Image Forgeries by Illumination Color ClassificationJPM1407   Exposing Digital Image Forgeries by Illumination Color Classification
JPM1407 Exposing Digital Image Forgeries by Illumination Color Classification
 

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Binary Rotation Invariant Noise Tolerant Texture Classification BRINT

  • 1. BRINT: Binary Rotation Invariant and Noise Tolerant Texture Classification ABSTRACT: In this paper, we propose a simple, efficient, yet robust multiresolution approach to texture classification—binary rotation invariant and noise tolerant (BRINT). The proposed approach is very fast to build, very compact while remaining robust to illumination variations, rotation changes, and noise. We develop a novel and simple strategy to compute a local binary descriptor based on the conventional local binary pattern (LBP) approach, preserving the advantageous characteristics of uniform LBP. Points are sampled in a circular neighborhood, but keeping the number of bins in a single-scale LBP histogram constant and small, such that arbitrarily large circular neighborhoods can be sampled and compactly encoded over a number of scales. There is no necessity to learn a texton dictionary, as in methods based on clustering, and no tuning of parameters is required to deal with different data sets. Extensive experimental results on representative texture databases show that the proposed BRINT not only demonstrates superior performance to a number of recent state-of-the-art LBP variants under normal conditions, but also performs significantly and consistently better in presence of
  • 2. noise due to its high distinctiveness and robustness. This noise robustness characteristic of the proposed BRINT is evaluated quantitatively with different artificially generated types and levels of noise (including Gaussian, salt and pepper, and speckle noise) in natural texture images. EXISTING SYSTEM: Among local texture descriptors, LBP has emerged as one of the most prominent and has attracted increasing attention in the field of image processing and computer visiondue to its outstanding advantages: (1) ease of implementation, (2) no need for pre-training, (3) invariance to monotonic illumination changes, and (4) low computational complexity, making LBP a preferred choice for many applications. Although originally proposed for texture analysis, the LBP method has been successfully applied to many diverse areas of image processing: dynamic texture recognition, remote sensing, fingerprint matching, visual inspection, image retrieval, biomedical image analysis, face image analysis, motion analysis, edge detection, and environment modeling. Consequently many LBP variants are present in the recent literature.
  • 3. DISADVANTAGES OF EXISTING SYSTEM:  Although significant progress has been made, most LBP variants still have prominent limitations, mostly the sensitivity to noise, and the limiting of LBP variants to three scales, failing to capture long range texture information.  Although some efforts have been made to include complementary filtering techniques, these increase the computational complexity, running counter to the computational efficiency property of the LBP method. PROPOSED SYSTEM: In this paper, we propose a novel, computationally simple approach, the Binary Rotation Invariant and Noise Tolerant (BRINT) descriptor, Motivated by the recent CLBP approach, which was proposed by Guo et al. to include both the signs and the magnitudes components between a given central pixel and its neighbors and the center pixel intensity in order to improve the discriminative power of the original LBP operator, we extend BRINT to include a magnitude component and to code the intensity of the center pixel. Based on these methods we develop a discriminative and robust combination for multi- resolution analysis, which will be
  • 4. demonstrated experimentally to perform robustly against changes in gray-scale, rotation, and noise without suffering any performance degradation under noise-free situations. ADVANTAGES OF PROPOSED SYSTEM:  It is highly discriminative, has low computational complexity, is highly robust to noise and rotation, and allows for compactly encoding a number of scales and arbitrarily large circular neighborhoods. At the feature extraction stage there is no pre-learning process and no additional parameters to be learned.
  • 5. SYSTEM ARCHITECTURE: SYSTEM REQUIREMENTS: HARDWARE REQUIREMENTS:  System : Pentium IV 2.4 GHz.
  • 6.  Hard Disk : 40 GB.  Floppy Drive : 1.44 Mb.  Monitor : 15 VGA Colour.  Mouse : Logitech.  Ram : 512 Mb. SOFTWARE REQUIREMENTS:  Operating system : Windows XP/7.  Coding Language : MATLAB  Tool : MATLAB R 2007B REFERENCE: Li Liu, Member, IEEE, Yunli Long, Paul W. Fieguth, Member, IEEE, Songyang Lao, and Guoying Zhao, Senior Member, IEEE ,“BRINT: Binary Rotation Invariant and Noise Tolerant Texture Classification”, IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 23, NO. 7, JULY 2014.