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Papers/ReVISE: Self-Supervised Speech Resynthesis with Visual Inp...

ReVISE: Self-Supervised Speech Resynthesis with Visual Input for Universal and Generalized Speech Enhancement

Wei-Ning Hsu, Tal Remez, Bowen Shi, Jacob Donley, Yossi Adi

2022-12-21Speech RecognitionResynthesisspeech-recognitionAudio-Visual Speech RecognitionText to SpeechVisual Speech RecognitionSpeech SynthesisText-To-Speech SynthesisSpeech EnhancementVideo Synchronizationtext-to-speech
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Abstract

Prior works on improving speech quality with visual input typically study each type of auditory distortion separately (e.g., separation, inpainting, video-to-speech) and present tailored algorithms. This paper proposes to unify these subjects and study Generalized Speech Enhancement, where the goal is not to reconstruct the exact reference clean signal, but to focus on improving certain aspects of speech. In particular, this paper concerns intelligibility, quality, and video synchronization. We cast the problem as audio-visual speech resynthesis, which is composed of two steps: pseudo audio-visual speech recognition (P-AVSR) and pseudo text-to-speech synthesis (P-TTS). P-AVSR and P-TTS are connected by discrete units derived from a self-supervised speech model. Moreover, we utilize self-supervised audio-visual speech model to initialize P-AVSR. The proposed model is coined ReVISE. ReVISE is the first high-quality model for in-the-wild video-to-speech synthesis and achieves superior performance on all LRS3 audio-visual enhancement tasks with a single model. To demonstrates its applicability in the real world, ReVISE is also evaluated on EasyCom, an audio-visual benchmark collected under challenging acoustic conditions with only 1.6 hours of training data. Similarly, ReVISE greatly suppresses noise and improves quality. Project page: https://wnhsu.github.io/ReVISE.

Results

TaskDatasetMetricValueModel
Speech RecognitionEasyComWER (%)52.1ReVISE (bf)
Speech RecognitionEasyComWER (%)55ReVISE (ch2)
Speech RecognitionEasyComWER (%)69.8Demucs (bf)
Speech RecognitionEasyComWER (%)86.8Demucs (ch2)
Speech EnhancementEasyComAudio Quality MOS4.19ReVISE (ch2)
Speech EnhancementEasyComAudio Quality MOS4.11ReVISE (bf)
Speech EnhancementEasyComAudio Quality MOS2.95Demucs (ch2)
Speech EnhancementEasyComAudio Quality MOS2.39Demucs (bf)

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