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Speaker verification using end-to-end adversarial language adaptation

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arxiv 1811.02331 v1 pith:SMFDQ4Q2 submitted 2018-11-06 eess.AS cs.SD

Speaker verification using end-to-end adversarial language adaptation

classification eess.AS cs.SD
keywords adaptationadversarialdomainspeakerend-to-endlabelslanguagemethods
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper we investigate the use of adversarial domain adaptation for addressing the problem of language mismatch between speaker recognition corpora. In the context of speaker verification, adversarial domain adaptation methods aim at minimizing certain divergences between the distribution that the utterance-level features follow (i.e. speaker embeddings) when drawn from source and target domains (i.e. languages), while preserving their capacity in recognizing speakers. Neural architectures for extracting utterance-level representations enable us to apply adversarial adaptation methods in an end-to-end fashion and train the network jointly with the standard cross-entropy loss. We examine several configurations, such as the use of (pseudo-)labels on the target domain as well as domain labels in the feature extractor, and we demonstrate the effectiveness of our method on the challenging NIST SRE16 and SRE18 benchmarks.

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