Augmentation Adversarial Training for Self-Supervised Speaker Representation Learning

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17
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22

초록

The goal of this work is to train robust speaker recognition models using self-supervised representation learning. Recent works on self-supervised speaker representations are based on contrastive learning in which they encourage within-utterance embeddings to be similar and across-utterance embeddings to be dissimilar. However, since the within-utterance segments share the same acoustic characteristics, it is difficult to separate the speaker information from the channel information. To this end, we propose an augmentation adversarial training strategy that trains the network to be discriminative for the speaker information, while invariant to the augmentation applied. Since the augmentation simulates the acoustic characteristics, training the network to be invariant to augmentation also encourages the network to be invariant to the channel information in general. Extensive experiments on the VoxCeleb and VOiCES datasets show significant improvements over previous works using self-supervision, and the performance of our self-supervised models far exceeds that of humans. We also conduct semi-supervised learning experiments to show that augmentation adversarial training benefits performance in presence of speaker labels.

키워드

TrainingSpeaker recognitionMeasurementTask analysisSemisupervised learningRepresentation learningEntropySelf-supervised learningspeaker recognitionVERIFICATION
제목
Augmentation Adversarial Training for Self-Supervised Speaker Representation Learning
저자
Kang, JinguHuh, JaesungHeo, Hee SooChung, Joon Son
DOI
10.1109/JSTSP.2022.3200915
발행일
2022-10
유형
Article
저널명
IEEE Journal on Selected Topics in Signal Processing
16
6
페이지
1253 ~ 1262