Skinaugment: Auto-Encoding Speaker Conversions For Automatic Speech Translation
Arya D. McCarthy, Liezl Puzon, Juan Pino
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We propose autoencoding speaker conversion for training data augmentation in automatic speech translation. This technique directly transforms an audio sequence, resulting in audio synthesized to resemble another speaker's voice. Our method compares favorably to SpecAugment on EnglishâFrench and EnglishâRomanian automatic speech translation (AST) tasks as well as on a low-resource English automatic speech recognition (ASR) task. Further, in ablations, we show the benefits of both quantity and diversity in augmented data. Finally, we show that our method can be combined with augmentation by machine-translated transcripts to obtain an end-to-end AST model that outperforms a very strong cascade model on an EnglishâFrench AST task. Our method is sufficiently general that it can be applied to other speech generation and analysis tasks.