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International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 595
Analysis of various cluster algorithms based on flying insect wing beat
sounds and their spatio-temporal features
S.Arif Abdul Rahuman1, Dr.J.Veerappan2
1Prof/CSE, M.E.T Engineering College, Tamilnadu, India
2Prof/ECE, Vel Tech High Tech Dr.Rangarajan Dr.Sakunthala Engineering College, Tamilnadu, India
---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - Our lifestyle and ecosystem are directly or
indirectly associated with insects. This association results in
both beneficial and unfavorable response to human life.
Presently, a lot of open issues are there with the impact of
insects on ecosystem which need immediate attention. The
paper includes process of detecting and monitoring of insect
species that threaten biological resources, in both productive
and native ecosystems, particularly for pest management and
biosecurity, is the issue focused in this paper. A lot ofnoveland
relevant applications have emerged in the field of clustering.
However, the researchers feel the task as a very difficultone to
digitize the process of clustering. The data relevant to the
flying insects often changes over time, and clustering of such
data is a central issue. Hence in this research work, a novel
classification approach based on the dynamic time warping
(DTW) algorithm is proposed and it uses to detect the insects’
sound based on their spatio-temporal features and Hidden
Markov Model to cluster the temporal sequence and identify
the vector density along with the type of insect. Again this
clustering framework includesacomparativestudyonvarious
clustering algorithms such as Agglomerative Hierarchical
clustering, k-means clustering, and Expected Maximization
clustering. The same framework also compares the
performance against soft computing techniques such as
Neural network clustering and Genetic algorithm and shows
Hidden Markov Model outperforms other statistical and soft
computing techniques.
Key Words: Dynamic Time warping, Hidden Markov
Model, Agglomerative Hierarchical clustering, k-means
clustering, Expected Maximization clustering
1. INTRODUCTION
In data mining, a field of computational entomology,a sub-
field of data mining provides efficient algorithms for
classification, clustering, spatiotemporal analyses, rule
discovery etc. regarding insects exploration and help the
researchers [1]. The Entomologists are aiming at reducing
the effect of unwanted species. Since certain species are
secretive, sensitive to disturbance, it is not easy to observe
and catch. There are some blanket methods available and
proven to be successful, but they are costly and create
environmental problems.Theframework includesprocessof
detecting and monitoring of insect species that threaten
biological resources, in both productive and native
ecosystems, particularly for pest management and
biosecurity, is the issue focused in this research work.
Additionally, there is potential for deployment of sensors to
obtain detailed spatio-temporal information about insect-
density related to environmental conditions, for precision
agriculture. Smart sensors are being developed withtheaim
of protecting the ecosystem just by counting and classifying
the insects, so that the automated process enables user to
eradicate the harmful insects in the target location but not
viable in large areas of time-series data.
The data relevant to the flying insects often changes over
time, and classification of such data is a central issue [2].
Hence in this research work, a novel classification approach
based on the dynamic time warping (DTW) algorithm is
proposed and it uses Hidden Markov Model to cluster the
temporal sequence and identify the vector density along
with the type of insect.
The clustering framework is evaluated under
(i) Benchmark dataset
(b) www.kaggle.com/heuristicsoft/dataset /for-
classification/ (mosquito –male/female)
(ii) With recorded dataset and
(iii) Uploaded dataset on Kaggle
The proposed work includes major process of performing
clustering in order to identify the type of insect and quantify
the vector density of identified insects.
2. RELATED WORK
In [3], authors uses probabilistic model to Estimates the
similarity of two audio signals using a set of features
calculated in short intervals. Then probabilistic models are
estimated for the featuredistributions. Whena small amount
of signals is retrieved (low recall / high precision) the HMM
likelihood test produces the best accuracy. In our proposal
Hidden Markov Model uses seven spatio-temporal features.
In [4]. Authors used a finite mixture of hidden Markov
models (HMMs) is fitted to the motion data using the
expectation-maximization (EM) framework. It reduces the
number of clusters and consequently the classification
accuracy. The clustering-based classifier achieved
comparable performance, but without the need for class
labeling provided in the supervised learning approach.
(a) ESC-50
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 596
Hidden Markov Model is proposed in our researchwork and
it needs no class labels for clustering. In [5], authors
computes Eigen vectors from affinity matrix and clusters
dominant Eigen vectors using k-means clustering. It is a
Simple method of clustering. More samples of rare actions
are essential to produce better recognition. Here the
computed Eigen vectors may sometime lead to bad
clustering as it uses the whole affinity matrix. In our work,
Clustering is done based on the hidden states too. In [6],
using support vector machines (SVMs) five classes are
recognized (silence, music, background sound, pure speech,
and non-pure speech). Eight features such as zero crossing
rates (ZCR), short time energy (STE), sub-band powers
distribution,brightness,bandwidth,spectrumflux(SF),band
periodicity (BP), and noise frame ratio (NFR) are used for
classification. Three classifiers are used to prove the
efficiency of features. Baseline classifier with ZCR, STE and
bandwidth and next classifier with power distributions and
third classifier with BP, SF and NFR.Herehighsignal tonoise
ratio is used and shown good accuracy.
3. CLUSTERING ALGORITHMS
Monitoring insects by the sounds they produce is an
important and challenging task, whether the application is
outdoors in a natural habitat, or in the controlled
environment of a laboratory setting. Researchers nowadays
implement clusteringalgorithmsonrecordedsoundstoform
disjoint subsets (clusters) based on certain similarities to
identify the type of insects and to find their vector density.
Clustering algorithms are used for identification of types of
insects using acoustical sounds in ordertoassesspopulation,
either for evaluating the population structure, population
abundance and density, or for assessing animal seasonal
distribution and trends.
Fig -1: Comparative Model of Clustering Algorithms
Clustering techniques are applied on the acoustical
sounds based on the type of data being clustered and how
much pre knowledge is available. Most of the clustering
techniques do not produces accurate results with simple
template matching. And even scaled template matching is
complex because of decay in certain portions of sound,
variation in frequencies etc. ComparativeModelofClustering
Algorithms is shown in Fig. 3.1
3.1 Hidden Markov Model
This model [5] works well with sounds that change in
duration as it can sustain portion of the sound in all
situations. To find what feature values correspond to which
categories – clustering is performed. Many clustering
techniques are available depending on the typeofdata being
clustered and how much pre knowledge is available. Most of
the sounds put into the same categoryhave widevariation in
which simple template matching fails and scaled template
matching is complex because of decay in certain portions of
sound, variation in frequencies etc.
Hidden Markov Model shown in fig. 2 works well with
sounds that change in duration as it can sustain portion of
the sound in all situations mentioned above. HiddenMarkov
model λ can be viewed as a Markov model whose states are
not directly observed: instead, each state is characterizedby
a probability distribution function, modeling the
observations corresponding to that state. The hidden states
- valid stages of a dynamic process Learning the HMM
parameters - given a set of observed sequences {Oi}
determine the parameters maximizing the likelihood
P({Oi}|λ). Train one HMM λi for each observed sequence Oi.
Compute the distance matrix D = {D(Oi , Oj )} representing a
similarity measure between sequences (Euclidean Distance
measure).
Fig -2: Hidden Markov Model
Use a pair wise distance-matrix-based methodtoperform
the clustering HMM, a probabilistic graphic model captures
the dependencies between consecutive measurements
easily. The clustering result is evaluated based on the data
that was clustered itself.
Davies–Bouldin index:
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 597
Table -1: Parameters of Davies–Bouldin index
Parameters Description
n Number of clusters
Cx
Centroid of
cluster x
x
Average distance of
all elements in
cluster x to
centroid Cx
d(Ci,Cj)
distance between
centroids, Ci and Cj
Low Davies–Bouldin index - Best
algorithm
Means low intra-cluster distances and
high inter-cluster distances
3.2. Agglomerative Hierarchical Clustering
Groups the data one by one on the basis of the nearest
distance measure of all the pair wise distance between the
data point of the feature vectors of the input audio file. Again
distance between the data point is recalculated and ward's
method (sum of squared Euclidean distance) is used to find
the optimal pair of data point (minimum distance) [7].
Fig -3: Spatio-temporal Features of insects
3.3. K-Means Clustering
Let X = {x1,x2,x3,……..,x7} be the set of data points of the
feature vectors and V = {v1,v2,…….,v7} be the set of centers.
The main goal of this method is to minimize the sum of the
variances within the partitions of the datathatareassociated
with one centroid. Let X = {x1,x2,x3,……..,x7} be the set of
data points of the feature vectors and V = {v1,v2,…….,v7} be
the set of centers.
The main goal of this method is to minimize the sum of
the variances within the partitions of the data that are
associated with one centroid [8, 9].
1. Select each cluster center.
2. Calculate the distance each data point of the feature
vector and cluster center.
3. Assign the data point to the cluster center whose
distance from the cluster center is minimum of all
the cluster centers.
4. Recalculate the new cluster center using
Vi = (1/Ci)  Xi
5. Recalculate the distance between each data point
and new obtained cluster centers.
6. If no data point was reassigned then stop, otherwise
repeat from step 3
3.4. Expectation-Maximization Clustering
The EM clustering algorithm computes probabilities of
cluster memberships based on one or more probability
distributions. The goal of the clustering algorithm then is to
maximize the overall probability or likelihood of the data,
given the (final) clusters [10]. In the Expectation step, for
each database record x,computethemembershipprobability
of x in each cluster h = 1,…, k. and in the Maximization step,
updates mixture model parameter (probability weight).
3.5. Neural Network Clustering – Self Organizing
Map Algorithm
This clustering methodology follows a output layer
network topology(1Dor2Drepresentation)andthenassigns
weights to input layer, using the Euclidean distance of each
node, and from weight vectors (wj ) associated with each
output node [11].
Training data: Vectors, X
– Vectors of length n
(x1,1, x1,2, ..., x1,i,…, x1,n)
(x2,1, x2,2, ..., x2,i,…, x2,n)
…
(xj,1, xj,2, ..., xj,i,…, xj,n)
p distinct training vectors
…
(xp,1, xp,2, ..., xp,i,…, xp,n)
Output: A vector, Y, of length m: (y1, y2, ..., yi ,…, ym).
– Each of the p vectors in the training data is classified as
falling in one of m clusters or categories
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 598
Fig -4: K-Means Clustering
Cluster Purity = 1/ N(max(no. of objects in each class))
Purity = 1/33 (max(20,13) = 0.6060
Fig -5: Expectation-Maximization Clustering
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 599
Fig -6: Neural Network Clustering
Algorithm
1. Select output layer network topology (1D or 2D
representation)
– Initialize current neighbourhood distance, D(0),
to a positive value.
2. Initialize weights from inputs to outputs to small
random values
3. Let t = 1
4. While computational bounds are not exceeded do
i. Select an input sample, i1
ii. Compute the square of the Euclidean distance of
i1 from weight vectors (wj ) associated with each
output node
iii. Select output node j* that has weight vector with
minimum value from step (ii)
iv. Update weights to all nodes within a topological
distance given by D(t) from j*, using the weight
update rule
v. Increment t
5. End while
3.6. Genetic Algorithm Clustering Model
In the clustering problem, the solutions best fitting the
data is then chosen according to a suitable criterion. The
algorithm startswithinitialpopulationandnextpopulationis
generated by applying genetic operator then the new
population with highest fitness score is selected and this
process gets repeated until stopping criteria is met [12].
Algorithm
Generate initial population P(t);
//with the activation values and the cluster centroids
Evaluate P(t);
//Use Fitness function -Calinski-Harabasz (CH) index
//the quotient between the intra-cluster average squared
distance and the inter-cluster average squared distance
While stopping criterion not satisfied do
1. Select parent population P0(t)fromP(t);//findingthe
one with the highest fitness
2. Apply genetic operators to P0(t)  P(t + 1); // finding
the one with the highest fitness
3. Replace random solutions in P(t + 1) with the best B
solutions in P(t);
4. Evaluate P(t + 1); // apply fitness function CH index
5. t = t + 1;
Result: Bestsolution (highestfitness value) ofthepopulation
in the last generation.
Fig -7: Genetic Algorithm Clustering Model
4. COMPARATIVE STUDY: EXPERIMENTAL SET UP AND
DISCUSSION OF CLUSTERING MODELS
Hidden Markov Modelclusteringisusedtogroupthetype
of insects. Performance analysis model is constructed by
comparing the averageintracluster,andinterclusterofHMM
clustering against other clustering algorithms on the
benchmark dataset and uploaded dataset. Based on intra
cluster and inter cluster values, DB index is computer and
used as another performance metric for evaluation on the
benchmark as well as the uploaded dataset.
HMM : Benefits: Flexible to handle variable-length data
(time-series data), Easy handling of similarity distance
measure(Euclidean distance measure)
Table 1: Comparison of clustering algorithms
Clustering
Algorithm
Benefits Drawbacks
HMM
Flexible to handle
variable-length data
(time-series data)
Easy handling of
similarity distance
Produces high
dimensionality
feature space (yet
identifies the type of
insects with good DB
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 600
measure(Euclidean
distance measure)
index)
AHC
No priori information
about the number of
clusters required.
(unknown type of
insects)
Not suitable for large
dataset. (our dataset
is too large)
k-means
Suitable for large data
set and produces
tighter cluster. (good
identificationoftypeof
insects)
Presence of noise
makes the clustering
difficult. (our dataset
includes noise)
EM
Model
Fast, handles high
dimensionality data
set
Presence of noise
makes the clustering
difficult (our dataset
includes noise)
SOM
Capable of organizing
complex data sets
(suitable for our time-
series data)
Performance gets
decreased as the
number of cluster
increases. (difficult
when the test data
contains more
insects sound)
GA
It produces optimized
result. (optimal
among feasible
solutions)
Repeated fitness
function evaluation
(repeated evaluation
of CH index)
5. RESULT AND DISCUSSIONS
The Hidden Markov model performs clustering withthebest
db index of 0.440 on the uploaded dataset, kaggle and 0.495
for benchmark dataset, ESC-50 dataset and identifies the
type of insects by approximately estimating their vector
density.
Fig -8: Performance Analysis in terms of intra and inter
clustering average of various clustering algorithms-
Kaggle.com for Recorded Data set
Fig -9: Performance Analysis in terms of DB index of
various clustering algorithms
Fig -10: Performance Analysis in terms of intra and inter
clustering average of various Clustering algorithms- ESC
50 – Bench Mark dataset
Fig -11: Performance Analysis in terms of DB index of
various clustering algorithms
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 601
6. CONCLUSIONS
Hidden Markov Model is simple andflexible withtime-series
data of insects sound with any frequency. Agglomerative
Hierarchical clustering do notrequireanyprioriinformation
for clustering and identifying the type of insects. K-means
clustering is best suited for largedatasetwithanyfrequency.
Expectation Maximization Model works faster with high
dimensional dataset and identify the type of insects
immediately. Self Organizing Map is manageable with high
dimensional and complex dataset even if outliers are
present. Genetic Algorithm produces optimal results in
identifying types of insects. This framework has used
Dynamic Time Warping (DTW) algorithm for generating the
similarity measure between two temporal sequences which
may vary in speed. Clusteranalysisofunknownacousticdata
is a hard problem, yet HMM achieves a mean to group
sounds based on spatio-temporal features. The
computational cost incurred forHMMClusteringisrelatively
low and the resulting model is quicker to train. HMM
clustering is compared to other clustering algorithms like
agglomerative hierarchical clustering, k-means clustering,
Expectation Maximization, Self Organizing map and Genetic
clustering algorithms and the following conclusions are
drawn: As number of clusters increases the performance of
k-means and AH increases but, the performance of SOM gets
decreased. All the clustering algorithms are ambiguous to
noisy data. K-means, EM and AHC are very sensitiveto noise.
If the dataset is too large, then k-means and EM performs
good. AHC and SOM sound good with smaller data set.
REFERENCES
[1] Skyler Seto, Wenyu Zhang, Yichen Zhou, 2015
“Multivariate Time Series Classification Using Dynamic
Time Warping Template Selection for Human Activity
Recognition.” 978-1-4799-7560-0/15/$31 c IEEE
[2] Yanping Chen, Adena Why, Gustavo Batista,
Agenor Mafra-Neto,Eamonn Keogh,2014,“FlyingInsect
Classification with Inexpensive Sensors.” Journal of
Insect Behavior September, Volume27, Issue 5, pp657–
677
[3] Tuomas Virtanen and Marko Helen,“ProbabilisticModel
Based Similarity Measures For Audio Query-by-
example.” in 2007 IEEE Workshop on Applications of
Signal Processing to Audio and Acoustics, NY, USA.
[4] Jonathan Alon, Stan Sclaroff, and George Kollios,
“Discovering Clusters in Motion Time-Series Data.”
Boston University Computer Science Tech. Report No.
2003-008, March 26, 2003
[5] Maryam Moslemi Naeini, Greg Dutton, Kristina Rothley,
and Greg Mori , “Action Recognition of Insects Using
Spectral Clustering.” Proceedings of the IAPR
Conference on Machine Vision Applications (IAPR MVA
2007), May 16-18, 2007, Tokyo, Japan
[6] L. Lu et al, “Content-based audio classification and
segmentation by using support vector machines”
Multimedia Systems, vol.8, no.6, pp.482-492, 2003
[7] Enrique Alexandre, Manuel Rosa, Lucas Cuadra, and
Roberto Gil-Pita,” Application of Fisher Linear
Discriminant Analysis to Speech/Music Classification”,
Journal of the Audio Engineering Society, May 2006
[8] Dhiman Mondal, Deepak Kumar Kole,“Detection and
Classification Technique of Yellow Vein Mosaic Virus
Disease in Okra Leaf Images using Leaf Vein Extraction
and Naive Bayesian Classifier”, 2015 International
Conference on Soft Computing Techniques and
Implementations.
[9] Oyelade, O. J, Oladipupo, O. O, Obagbuwa, I. C
“Application of k-Means Clustering algorithm for
prediction of Students’ Academic Performance”
[10] Michael I. Mandel, J.Weisis, “Model-Based Expectation-
Maximization Source SeparationandLocalization”,IEEE
Transactions on Audio, Speech, and Language
Processing, Vol. 17, No. 8, November 2009
[11] Luqman R. Bachtiar, Charles P. Unsworth,” Using
Artificial Neural Networks to Classify Unknown Volatile
Chemicals from the Firings of Insect Olfactory Sensory
Neurons ”, 33rd Annual International Conference of the
IEEE EMBS, 2011
[12] Masataka Fuchida , Thejus Pathmakumar , Rajesh Elara
Mohan , Ning Tan and Akio Nakamura “Vision-Based
Perception and Classification of Mosquitoes Using
Support Vector Machine”. 2017

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Analysis of Various Cluster Algorithms Based on Flying Insect Wing Beat Sounds and their Spatio-Temporal Features

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 595 Analysis of various cluster algorithms based on flying insect wing beat sounds and their spatio-temporal features S.Arif Abdul Rahuman1, Dr.J.Veerappan2 1Prof/CSE, M.E.T Engineering College, Tamilnadu, India 2Prof/ECE, Vel Tech High Tech Dr.Rangarajan Dr.Sakunthala Engineering College, Tamilnadu, India ---------------------------------------------------------------------***--------------------------------------------------------------------- Abstract - Our lifestyle and ecosystem are directly or indirectly associated with insects. This association results in both beneficial and unfavorable response to human life. Presently, a lot of open issues are there with the impact of insects on ecosystem which need immediate attention. The paper includes process of detecting and monitoring of insect species that threaten biological resources, in both productive and native ecosystems, particularly for pest management and biosecurity, is the issue focused in this paper. A lot ofnoveland relevant applications have emerged in the field of clustering. However, the researchers feel the task as a very difficultone to digitize the process of clustering. The data relevant to the flying insects often changes over time, and clustering of such data is a central issue. Hence in this research work, a novel classification approach based on the dynamic time warping (DTW) algorithm is proposed and it uses to detect the insects’ sound based on their spatio-temporal features and Hidden Markov Model to cluster the temporal sequence and identify the vector density along with the type of insect. Again this clustering framework includesacomparativestudyonvarious clustering algorithms such as Agglomerative Hierarchical clustering, k-means clustering, and Expected Maximization clustering. The same framework also compares the performance against soft computing techniques such as Neural network clustering and Genetic algorithm and shows Hidden Markov Model outperforms other statistical and soft computing techniques. Key Words: Dynamic Time warping, Hidden Markov Model, Agglomerative Hierarchical clustering, k-means clustering, Expected Maximization clustering 1. INTRODUCTION In data mining, a field of computational entomology,a sub- field of data mining provides efficient algorithms for classification, clustering, spatiotemporal analyses, rule discovery etc. regarding insects exploration and help the researchers [1]. The Entomologists are aiming at reducing the effect of unwanted species. Since certain species are secretive, sensitive to disturbance, it is not easy to observe and catch. There are some blanket methods available and proven to be successful, but they are costly and create environmental problems.Theframework includesprocessof detecting and monitoring of insect species that threaten biological resources, in both productive and native ecosystems, particularly for pest management and biosecurity, is the issue focused in this research work. Additionally, there is potential for deployment of sensors to obtain detailed spatio-temporal information about insect- density related to environmental conditions, for precision agriculture. Smart sensors are being developed withtheaim of protecting the ecosystem just by counting and classifying the insects, so that the automated process enables user to eradicate the harmful insects in the target location but not viable in large areas of time-series data. The data relevant to the flying insects often changes over time, and classification of such data is a central issue [2]. Hence in this research work, a novel classification approach based on the dynamic time warping (DTW) algorithm is proposed and it uses Hidden Markov Model to cluster the temporal sequence and identify the vector density along with the type of insect. The clustering framework is evaluated under (i) Benchmark dataset (b) www.kaggle.com/heuristicsoft/dataset /for- classification/ (mosquito –male/female) (ii) With recorded dataset and (iii) Uploaded dataset on Kaggle The proposed work includes major process of performing clustering in order to identify the type of insect and quantify the vector density of identified insects. 2. RELATED WORK In [3], authors uses probabilistic model to Estimates the similarity of two audio signals using a set of features calculated in short intervals. Then probabilistic models are estimated for the featuredistributions. Whena small amount of signals is retrieved (low recall / high precision) the HMM likelihood test produces the best accuracy. In our proposal Hidden Markov Model uses seven spatio-temporal features. In [4]. Authors used a finite mixture of hidden Markov models (HMMs) is fitted to the motion data using the expectation-maximization (EM) framework. It reduces the number of clusters and consequently the classification accuracy. The clustering-based classifier achieved comparable performance, but without the need for class labeling provided in the supervised learning approach. (a) ESC-50
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 596 Hidden Markov Model is proposed in our researchwork and it needs no class labels for clustering. In [5], authors computes Eigen vectors from affinity matrix and clusters dominant Eigen vectors using k-means clustering. It is a Simple method of clustering. More samples of rare actions are essential to produce better recognition. Here the computed Eigen vectors may sometime lead to bad clustering as it uses the whole affinity matrix. In our work, Clustering is done based on the hidden states too. In [6], using support vector machines (SVMs) five classes are recognized (silence, music, background sound, pure speech, and non-pure speech). Eight features such as zero crossing rates (ZCR), short time energy (STE), sub-band powers distribution,brightness,bandwidth,spectrumflux(SF),band periodicity (BP), and noise frame ratio (NFR) are used for classification. Three classifiers are used to prove the efficiency of features. Baseline classifier with ZCR, STE and bandwidth and next classifier with power distributions and third classifier with BP, SF and NFR.Herehighsignal tonoise ratio is used and shown good accuracy. 3. CLUSTERING ALGORITHMS Monitoring insects by the sounds they produce is an important and challenging task, whether the application is outdoors in a natural habitat, or in the controlled environment of a laboratory setting. Researchers nowadays implement clusteringalgorithmsonrecordedsoundstoform disjoint subsets (clusters) based on certain similarities to identify the type of insects and to find their vector density. Clustering algorithms are used for identification of types of insects using acoustical sounds in ordertoassesspopulation, either for evaluating the population structure, population abundance and density, or for assessing animal seasonal distribution and trends. Fig -1: Comparative Model of Clustering Algorithms Clustering techniques are applied on the acoustical sounds based on the type of data being clustered and how much pre knowledge is available. Most of the clustering techniques do not produces accurate results with simple template matching. And even scaled template matching is complex because of decay in certain portions of sound, variation in frequencies etc. ComparativeModelofClustering Algorithms is shown in Fig. 3.1 3.1 Hidden Markov Model This model [5] works well with sounds that change in duration as it can sustain portion of the sound in all situations. To find what feature values correspond to which categories – clustering is performed. Many clustering techniques are available depending on the typeofdata being clustered and how much pre knowledge is available. Most of the sounds put into the same categoryhave widevariation in which simple template matching fails and scaled template matching is complex because of decay in certain portions of sound, variation in frequencies etc. Hidden Markov Model shown in fig. 2 works well with sounds that change in duration as it can sustain portion of the sound in all situations mentioned above. HiddenMarkov model λ can be viewed as a Markov model whose states are not directly observed: instead, each state is characterizedby a probability distribution function, modeling the observations corresponding to that state. The hidden states - valid stages of a dynamic process Learning the HMM parameters - given a set of observed sequences {Oi} determine the parameters maximizing the likelihood P({Oi}|λ). Train one HMM λi for each observed sequence Oi. Compute the distance matrix D = {D(Oi , Oj )} representing a similarity measure between sequences (Euclidean Distance measure). Fig -2: Hidden Markov Model Use a pair wise distance-matrix-based methodtoperform the clustering HMM, a probabilistic graphic model captures the dependencies between consecutive measurements easily. The clustering result is evaluated based on the data that was clustered itself. Davies–Bouldin index:
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 597 Table -1: Parameters of Davies–Bouldin index Parameters Description n Number of clusters Cx Centroid of cluster x x Average distance of all elements in cluster x to centroid Cx d(Ci,Cj) distance between centroids, Ci and Cj Low Davies–Bouldin index - Best algorithm Means low intra-cluster distances and high inter-cluster distances 3.2. Agglomerative Hierarchical Clustering Groups the data one by one on the basis of the nearest distance measure of all the pair wise distance between the data point of the feature vectors of the input audio file. Again distance between the data point is recalculated and ward's method (sum of squared Euclidean distance) is used to find the optimal pair of data point (minimum distance) [7]. Fig -3: Spatio-temporal Features of insects 3.3. K-Means Clustering Let X = {x1,x2,x3,……..,x7} be the set of data points of the feature vectors and V = {v1,v2,…….,v7} be the set of centers. The main goal of this method is to minimize the sum of the variances within the partitions of the datathatareassociated with one centroid. Let X = {x1,x2,x3,……..,x7} be the set of data points of the feature vectors and V = {v1,v2,…….,v7} be the set of centers. The main goal of this method is to minimize the sum of the variances within the partitions of the data that are associated with one centroid [8, 9]. 1. Select each cluster center. 2. Calculate the distance each data point of the feature vector and cluster center. 3. Assign the data point to the cluster center whose distance from the cluster center is minimum of all the cluster centers. 4. Recalculate the new cluster center using Vi = (1/Ci)  Xi 5. Recalculate the distance between each data point and new obtained cluster centers. 6. If no data point was reassigned then stop, otherwise repeat from step 3 3.4. Expectation-Maximization Clustering The EM clustering algorithm computes probabilities of cluster memberships based on one or more probability distributions. The goal of the clustering algorithm then is to maximize the overall probability or likelihood of the data, given the (final) clusters [10]. In the Expectation step, for each database record x,computethemembershipprobability of x in each cluster h = 1,…, k. and in the Maximization step, updates mixture model parameter (probability weight). 3.5. Neural Network Clustering – Self Organizing Map Algorithm This clustering methodology follows a output layer network topology(1Dor2Drepresentation)andthenassigns weights to input layer, using the Euclidean distance of each node, and from weight vectors (wj ) associated with each output node [11]. Training data: Vectors, X – Vectors of length n (x1,1, x1,2, ..., x1,i,…, x1,n) (x2,1, x2,2, ..., x2,i,…, x2,n) … (xj,1, xj,2, ..., xj,i,…, xj,n) p distinct training vectors … (xp,1, xp,2, ..., xp,i,…, xp,n) Output: A vector, Y, of length m: (y1, y2, ..., yi ,…, ym). – Each of the p vectors in the training data is classified as falling in one of m clusters or categories
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 598 Fig -4: K-Means Clustering Cluster Purity = 1/ N(max(no. of objects in each class)) Purity = 1/33 (max(20,13) = 0.6060 Fig -5: Expectation-Maximization Clustering
  • 5. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 599 Fig -6: Neural Network Clustering Algorithm 1. Select output layer network topology (1D or 2D representation) – Initialize current neighbourhood distance, D(0), to a positive value. 2. Initialize weights from inputs to outputs to small random values 3. Let t = 1 4. While computational bounds are not exceeded do i. Select an input sample, i1 ii. Compute the square of the Euclidean distance of i1 from weight vectors (wj ) associated with each output node iii. Select output node j* that has weight vector with minimum value from step (ii) iv. Update weights to all nodes within a topological distance given by D(t) from j*, using the weight update rule v. Increment t 5. End while 3.6. Genetic Algorithm Clustering Model In the clustering problem, the solutions best fitting the data is then chosen according to a suitable criterion. The algorithm startswithinitialpopulationandnextpopulationis generated by applying genetic operator then the new population with highest fitness score is selected and this process gets repeated until stopping criteria is met [12]. Algorithm Generate initial population P(t); //with the activation values and the cluster centroids Evaluate P(t); //Use Fitness function -Calinski-Harabasz (CH) index //the quotient between the intra-cluster average squared distance and the inter-cluster average squared distance While stopping criterion not satisfied do 1. Select parent population P0(t)fromP(t);//findingthe one with the highest fitness 2. Apply genetic operators to P0(t)  P(t + 1); // finding the one with the highest fitness 3. Replace random solutions in P(t + 1) with the best B solutions in P(t); 4. Evaluate P(t + 1); // apply fitness function CH index 5. t = t + 1; Result: Bestsolution (highestfitness value) ofthepopulation in the last generation. Fig -7: Genetic Algorithm Clustering Model 4. COMPARATIVE STUDY: EXPERIMENTAL SET UP AND DISCUSSION OF CLUSTERING MODELS Hidden Markov Modelclusteringisusedtogroupthetype of insects. Performance analysis model is constructed by comparing the averageintracluster,andinterclusterofHMM clustering against other clustering algorithms on the benchmark dataset and uploaded dataset. Based on intra cluster and inter cluster values, DB index is computer and used as another performance metric for evaluation on the benchmark as well as the uploaded dataset. HMM : Benefits: Flexible to handle variable-length data (time-series data), Easy handling of similarity distance measure(Euclidean distance measure) Table 1: Comparison of clustering algorithms Clustering Algorithm Benefits Drawbacks HMM Flexible to handle variable-length data (time-series data) Easy handling of similarity distance Produces high dimensionality feature space (yet identifies the type of insects with good DB
  • 6. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 600 measure(Euclidean distance measure) index) AHC No priori information about the number of clusters required. (unknown type of insects) Not suitable for large dataset. (our dataset is too large) k-means Suitable for large data set and produces tighter cluster. (good identificationoftypeof insects) Presence of noise makes the clustering difficult. (our dataset includes noise) EM Model Fast, handles high dimensionality data set Presence of noise makes the clustering difficult (our dataset includes noise) SOM Capable of organizing complex data sets (suitable for our time- series data) Performance gets decreased as the number of cluster increases. (difficult when the test data contains more insects sound) GA It produces optimized result. (optimal among feasible solutions) Repeated fitness function evaluation (repeated evaluation of CH index) 5. RESULT AND DISCUSSIONS The Hidden Markov model performs clustering withthebest db index of 0.440 on the uploaded dataset, kaggle and 0.495 for benchmark dataset, ESC-50 dataset and identifies the type of insects by approximately estimating their vector density. Fig -8: Performance Analysis in terms of intra and inter clustering average of various clustering algorithms- Kaggle.com for Recorded Data set Fig -9: Performance Analysis in terms of DB index of various clustering algorithms Fig -10: Performance Analysis in terms of intra and inter clustering average of various Clustering algorithms- ESC 50 – Bench Mark dataset Fig -11: Performance Analysis in terms of DB index of various clustering algorithms
  • 7. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 12 | Dec -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 6.171 | ISO 9001:2008 Certified Journal | Page 601 6. CONCLUSIONS Hidden Markov Model is simple andflexible withtime-series data of insects sound with any frequency. Agglomerative Hierarchical clustering do notrequireanyprioriinformation for clustering and identifying the type of insects. K-means clustering is best suited for largedatasetwithanyfrequency. Expectation Maximization Model works faster with high dimensional dataset and identify the type of insects immediately. Self Organizing Map is manageable with high dimensional and complex dataset even if outliers are present. Genetic Algorithm produces optimal results in identifying types of insects. This framework has used Dynamic Time Warping (DTW) algorithm for generating the similarity measure between two temporal sequences which may vary in speed. Clusteranalysisofunknownacousticdata is a hard problem, yet HMM achieves a mean to group sounds based on spatio-temporal features. The computational cost incurred forHMMClusteringisrelatively low and the resulting model is quicker to train. HMM clustering is compared to other clustering algorithms like agglomerative hierarchical clustering, k-means clustering, Expectation Maximization, Self Organizing map and Genetic clustering algorithms and the following conclusions are drawn: As number of clusters increases the performance of k-means and AH increases but, the performance of SOM gets decreased. All the clustering algorithms are ambiguous to noisy data. K-means, EM and AHC are very sensitiveto noise. If the dataset is too large, then k-means and EM performs good. AHC and SOM sound good with smaller data set. REFERENCES [1] Skyler Seto, Wenyu Zhang, Yichen Zhou, 2015 “Multivariate Time Series Classification Using Dynamic Time Warping Template Selection for Human Activity Recognition.” 978-1-4799-7560-0/15/$31 c IEEE [2] Yanping Chen, Adena Why, Gustavo Batista, Agenor Mafra-Neto,Eamonn Keogh,2014,“FlyingInsect Classification with Inexpensive Sensors.” Journal of Insect Behavior September, Volume27, Issue 5, pp657– 677 [3] Tuomas Virtanen and Marko Helen,“ProbabilisticModel Based Similarity Measures For Audio Query-by- example.” in 2007 IEEE Workshop on Applications of Signal Processing to Audio and Acoustics, NY, USA. [4] Jonathan Alon, Stan Sclaroff, and George Kollios, “Discovering Clusters in Motion Time-Series Data.” Boston University Computer Science Tech. Report No. 2003-008, March 26, 2003 [5] Maryam Moslemi Naeini, Greg Dutton, Kristina Rothley, and Greg Mori , “Action Recognition of Insects Using Spectral Clustering.” Proceedings of the IAPR Conference on Machine Vision Applications (IAPR MVA 2007), May 16-18, 2007, Tokyo, Japan [6] L. Lu et al, “Content-based audio classification and segmentation by using support vector machines” Multimedia Systems, vol.8, no.6, pp.482-492, 2003 [7] Enrique Alexandre, Manuel Rosa, Lucas Cuadra, and Roberto Gil-Pita,” Application of Fisher Linear Discriminant Analysis to Speech/Music Classification”, Journal of the Audio Engineering Society, May 2006 [8] Dhiman Mondal, Deepak Kumar Kole,“Detection and Classification Technique of Yellow Vein Mosaic Virus Disease in Okra Leaf Images using Leaf Vein Extraction and Naive Bayesian Classifier”, 2015 International Conference on Soft Computing Techniques and Implementations. [9] Oyelade, O. J, Oladipupo, O. O, Obagbuwa, I. C “Application of k-Means Clustering algorithm for prediction of Students’ Academic Performance” [10] Michael I. Mandel, J.Weisis, “Model-Based Expectation- Maximization Source SeparationandLocalization”,IEEE Transactions on Audio, Speech, and Language Processing, Vol. 17, No. 8, November 2009 [11] Luqman R. Bachtiar, Charles P. Unsworth,” Using Artificial Neural Networks to Classify Unknown Volatile Chemicals from the Firings of Insect Olfactory Sensory Neurons ”, 33rd Annual International Conference of the IEEE EMBS, 2011 [12] Masataka Fuchida , Thejus Pathmakumar , Rajesh Elara Mohan , Ning Tan and Akio Nakamura “Vision-Based Perception and Classification of Mosquitoes Using Support Vector Machine”. 2017