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Revisiting Over-Smoothness in Text to Speech

Yi Ren, Xu Tan, Tao Qin, Zhou Zhao, Tie‐Yan Liu

2022Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)36 citationsDOIOpen Access PDF

Abstract

Non-autoregressive text to speech (NAR-TTS) models have attracted much attention from both academia and industry due to their fast generation speed. One limitation of NAR-TTS models is that they ignore the correlation in time and frequency domains while generating speech mel-spectrograms, and thus cause blurry and over-smoothed results. In this work, we revisit this over-smoothing problem from a novel perspective: the degree of over-smoothness is determined by the gap between the complexity of data distributions and the capability of modeling methods. Both simplifying data distributions and improving modeling methods can alleviate the problem. Accordingly, we first study methods reducing the complexity of data distributions. Then we conduct a comprehensive study on NAR-TTS models that use some advanced modeling methods. Based on these studies, we find that 1) methods that provide additional condition inputs reduce the complexity of data distributions to model, thus alleviating the over-smoothing problem and achieving better voice quality. 2) Among advanced modeling methods, Laplacian mixture loss performs well at modeling multimodal distributions and enjoys its simplicity, while GAN and Glow achieve the best voice quality while suffering from increased training or model complexity.

Topics & Concepts

SmoothingComputer scienceSpectrogramSmoothnessAutoregressive modelVariance (accounting)Speech recognitionMachine learningArtificial intelligenceAlgorithmMathematicsStatisticsMathematical analysisAccountingComputer visionBusinessSpeech Recognition and SynthesisSpeech and Audio ProcessingMusic and Audio Processing
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