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How to Improve Your Speaker Embeddings Extractor in Generic Toolkits

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arxiv 1811.02066 v1 pith:2D5GRZ7W submitted 2018-11-05 cs.SD cs.CLeess.AS

How to Improve Your Speaker Embeddings Extractor in Generic Toolkits

classification cs.SD cs.CLeess.AS
keywords speakerembeddingsgenericimplementationmethodadditionalternativeanticipate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recently, speaker embeddings extracted with deep neural networks became the state-of-the-art method for speaker verification. In this paper we aim to facilitate its implementation on a more generic toolkit than Kaldi, which we anticipate to enable further improvements on the method. We examine several tricks in training, such as the effects of normalizing input features and pooled statistics, different methods for preventing overfitting as well as alternative non-linearities that can be used instead of Rectifier Linear Units. In addition, we investigate the difference in performance between TDNN and CNN, and between two types of attention mechanism. Experimental results on Speaker in the Wild, SRE 2016 and SRE 2018 datasets demonstrate the effectiveness of the proposed implementation.

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  1. Self Multi-Head Attention for Speaker Recognition

    cs.SD 2019-06 unverdicted novelty 6.0

    Self multi-head attention applied after CNN encoding of spectrograms outperforms temporal and statistical pooling for speaker verification on VoxCeleb1 with 18% relative EER reduction.