Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification

Voice biometrics has a long history in biosecurity applications such as verification and identification based on characteristics of the human voice. The other application called voice classification which has its important role in grouping unlabelled voice samples, however, has not been widely studi...

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Main Author: Simon Fong
Format: Article
Language:English
Published: Hindawi Limited 2012-01-01
Series:Journal of Biomedicine and Biotechnology
Online Access:http://dx.doi.org/10.1155/2012/215019
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spelling doaj-5843ac2d85124f49b9141f12ea497bdc2020-11-24T21:26:25ZengHindawi LimitedJournal of Biomedicine and Biotechnology1110-72431110-72512012-01-01201210.1155/2012/215019215019Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice ClassificationSimon Fong0Department of Computer and Information Science, University of Macau, Taipa, MacauVoice biometrics has a long history in biosecurity applications such as verification and identification based on characteristics of the human voice. The other application called voice classification which has its important role in grouping unlabelled voice samples, however, has not been widely studied in research. Lately voice classification is found useful in phone monitoring, classifying speakers’ gender, ethnicity and emotion states, and so forth. In this paper, a collection of computational algorithms are proposed to support voice classification; the algorithms are a combination of hierarchical clustering, dynamic time wrap transform, discrete wavelet transform, and decision tree. The proposed algorithms are relatively more transparent and interpretable than the existing ones, though many techniques such as Artificial Neural Networks, Support Vector Machine, and Hidden Markov Model (which inherently function like a black box) have been applied for voice verification and voice identification. Two datasets, one that is generated synthetically and the other one empirically collected from past voice recognition experiment, are used to verify and demonstrate the effectiveness of our proposed voice classification algorithm.http://dx.doi.org/10.1155/2012/215019
collection DOAJ
language English
format Article
sources DOAJ
author Simon Fong
spellingShingle Simon Fong
Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
Journal of Biomedicine and Biotechnology
author_facet Simon Fong
author_sort Simon Fong
title Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
title_short Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
title_full Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
title_fullStr Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
title_full_unstemmed Using Hierarchical Time Series Clustering Algorithm and Wavelet Classifier for Biometric Voice Classification
title_sort using hierarchical time series clustering algorithm and wavelet classifier for biometric voice classification
publisher Hindawi Limited
series Journal of Biomedicine and Biotechnology
issn 1110-7243
1110-7251
publishDate 2012-01-01
description Voice biometrics has a long history in biosecurity applications such as verification and identification based on characteristics of the human voice. The other application called voice classification which has its important role in grouping unlabelled voice samples, however, has not been widely studied in research. Lately voice classification is found useful in phone monitoring, classifying speakers’ gender, ethnicity and emotion states, and so forth. In this paper, a collection of computational algorithms are proposed to support voice classification; the algorithms are a combination of hierarchical clustering, dynamic time wrap transform, discrete wavelet transform, and decision tree. The proposed algorithms are relatively more transparent and interpretable than the existing ones, though many techniques such as Artificial Neural Networks, Support Vector Machine, and Hidden Markov Model (which inherently function like a black box) have been applied for voice verification and voice identification. Two datasets, one that is generated synthetically and the other one empirically collected from past voice recognition experiment, are used to verify and demonstrate the effectiveness of our proposed voice classification algorithm.
url http://dx.doi.org/10.1155/2012/215019
work_keys_str_mv AT simonfong usinghierarchicaltimeseriesclusteringalgorithmandwaveletclassifierforbiometricvoiceclassification
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