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Investigation of Specaugment for Deep Speaker Embedding Learning

Shuai Wang, Johan Rohdin, Oldřich Plchot, Lukáš Burget, Kai Yu, Jaň Černocký

202044 citationsDOI

Abstract

SpecAugment is a newly proposed data augmentation method for speech recognition. By randomly masking bands in the log Mel spectogram this method leads to impressive performance improvements. In this paper, we investigate the usage of SpecAugment for speaker verification tasks. Two different models, namely 1-D convolutional TDNN and 2-D convolutional ResNet34, trained with either Softmax or AAM-Softmax loss, are used to analyze SpecAugment's effectiveness. Experiments are carried out on the Voxceleb and NIST SRE 2016 dataset. By applying SpecAugment to the original clean data in an on-the-fly manner without complex off-line data augmentation methods, we obtained 3.72% and 11.49% EER for NIST SRE 2016 Cantonese and Tagalog, respectively. For Voxceleb1 evaluation set, we obtained 1.47% EER.

Topics & Concepts

NISTSoftmax functionComputer scienceSpeech recognitionConvolutional neural networkArtificial intelligenceData setTraining setPattern recognition (psychology)EmbeddingSpeaker recognitionSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing