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Speaker Model Clustering to Construct Background Models for Speaker Verification

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dc.contributor.author Disken, Gokay
dc.contributor.author Tufekci, Zekeriya
dc.contributor.author Cevik, Ulus
dc.date.accessioned 2019-11-13T11:29:09Z
dc.date.available 2019-11-13T11:29:09Z
dc.date.issued 2017
dc.identifier.citation Disken, G., Tufekci, Z., & Cevik, U. (2017). Speaker Model Clustering to Construct Background Models for Speaker Verification. Archives of Acoustics, 42(1), 127-135. https://doi.org/10.1515/aoa-2017-0014 tr_TR
dc.identifier.issn 0137-5075
dc.identifier.issn 2300-262X
dc.identifier.uri http://openaccess.adanabtu.edu.tr:8080/xmlui/handle/123456789/556
dc.identifier.uri https://doi.org/10.1515/aoa-2017-0014
dc.description WOS indeksli yayınlar koleksiyonu. / WOS indexed publications collection.
dc.description.abstract Conventional speaker recognition systems use the Universal Background Model (UBM) as an imposter for all speakers. In this paper, speaker models are clustered to obtain better imposter model representations for speaker verification purpose. First, a UBM is trained, and speaker models are adapted from the UBM. Then, the k-means algorithm with the Euclidean distance measure is applied to the speaker models. The speakers are divided into two, three, four, and five clusters. The resulting cluster centers are used as background models of their respective speakers. Experiments showed that the proposed method consistently produced lower Equal Error Rates (EER) than the conventional UBM approach for 3, 10, and 30 seconds long test utterances, and also for channel mismatch conditions. The proposed method is also compared with the i-vector approach. The three-cluster model achieved the best performance with a 12.4% relative EER reduction in average, compared to the i-vector method. Statistical significance of the results are also given. tr_TR
dc.language.iso en tr_TR
dc.publisher ARCHIVES OF ACOUSTICS / POLSKA AKAD NAUK, POLISH ACAD SCIENCES, INST FUNDAMENTAL TECH RES PAS tr_TR
dc.relation.ispartofseries 2017;Volume: 42 Issue: 1
dc.subject Gaussian mixture models tr_TR
dc.subject k-means
dc.subject imposter models
dc.subject speaker clustering
dc.subject speaker verification
dc.subject GAUSSIAN MIXTURE-MODELS
dc.subject NEURAL-NETWORK
dc.subject IDENTIFICATION
dc.subject RECOGNITION
dc.subject SELECTION
dc.subject TUTORIAL
dc.subject UBM
dc.subject Acoustics
dc.title Speaker Model Clustering to Construct Background Models for Speaker Verification tr_TR
dc.type Article tr_TR


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