Litcius/Paper detail

A Comprehensive Study on Self-Supervised Distillation for Speaker Representation Learning

Zhengyang Chen, Yao Qian, Bing Han, Yanmin Qian, Michael Zeng

20232022 IEEE Spoken Language Technology Workshop (SLT)13 citationsDOI

Abstract

In real application scenarios, it is often challenging to obtain a large amount of labeled data for speaker representation learning due to speaker privacy concerns. Self-supervised learning with no labels has become a more and more promising way to solve it. Compared with contrastive learning, self-distilled approaches use only positive samples in the loss function and thus are more attractive. In this paper, we present a comprehensive study on self-distilled self-supervised speaker representation learning, especially on critical data augmentation. Our proposed strategy of audio perturbation augmentation has pushed the performance of the speaker representation to a new limit. The experimental results show that our model can achieve a new SoTA on Voxceleb 1 speaker verification evaluation benchmark (i.e., equal error rate (EER) 2.505%, 2.473%, and 4.791 % for trial Vox1-O, Vox1-E and Vox1-H, respectively), discarding any speaker labels in the training phase.

Topics & Concepts

Computer scienceBenchmark (surveying)Representation (politics)Speaker recognitionSpeech recognitionArtificial intelligenceWord error rateTraining setFeature learningMachine learningLawGeographyPolitical scienceGeodesyPoliticsSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing