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arxiv 2011.05189 v2 pith:C62EZOMV submitted 2020-11-10 cs.SD eess.AS

Supervised attention for speaker recognition

classification cs.SD eess.AS
keywords contextrecognitionspeakervectorattentionend-to-endexistingframes
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The recently proposed self-attentive pooling (SAP) has shown good performance in several speaker recognition systems. In SAP systems, the context vector is trained end-to-end together with the feature extractor, where the role of context vector is to select the most discriminative frames for speaker recognition. However, the SAP underperforms compared to the temporal average pooling (TAP) baseline in some settings, which implies that the attention is not learnt effectively in end-to-end training. To tackle this problem, we introduce strategies for training the attention mechanism in a supervised manner, which learns the context vector using classified samples. With our proposed methods, context vector can be boosted to select the most informative frames. We show that our method outperforms existing methods in various experimental settings including short utterance speaker recognition, and achieves competitive performance over the existing baselines on the VoxCeleb datasets.

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