SDLGApr 6, 2017

Time-Contrastive Learning Based DNN Bottleneck Features for Text-Dependent Speaker Verification

arXiv:1704.02373v3
Originality Incremental advance
AI Analysis

This work addresses speaker verification for security applications, but it is incremental as it builds on existing bottleneck feature methods with a novel temporal approach.

The paper tackled text-dependent speaker verification by proposing a time-contrastive learning method to extract bottleneck features from speech signals, achieving superior performance over existing features on the RedDots Challenge 2016 database.

In this paper, we present a time-contrastive learning (TCL) based bottleneck (BN)feature extraction method for speech signals with an application to text-dependent (TD) speaker verification (SV). It is well-known that speech signals exhibit quasi-stationary behavior in and only in a short interval, and the TCL method aims to exploit this temporal structure. More specifically, it trains deep neural networks (DNNs) to discriminate temporal events obtained by uniformly segmenting speech signals, in contrast to existing DNN based BN feature extraction methods that train DNNs using labeled data to discriminate speakers or pass-phrases or phones or a combination of them. In the context of speaker verification, speech data of fixed pass-phrases are used for TCL-BN training, while the pass-phrases used for TCL-BN training are excluded from being used for SV, so that the learned features can be considered generic. The method is evaluated on the RedDots Challenge 2016 database. Experimental results show that TCL-BN is superior to the existing speaker and pass-phrase discriminant BN features and the Mel-frequency cepstral coefficient feature for text-dependent speaker verification.

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