MMAICVSDASMay 9, 2023

Zero-shot personalized lip-to-speech synthesis with face image based voice control

arXiv:2305.14359v16 citations
Originality Incremental advance
AI Analysis

This addresses the limitation in lip-to-speech synthesis where unseen speakers require reference audio for voice control, making it incremental by introducing face-based control.

The paper tackles the problem of zero-shot personalized lip-to-speech synthesis by enabling voice control using only face images instead of reference audio, achieving more natural and personality-matching synthetic speech than existing methods.

Lip-to-Speech (Lip2Speech) synthesis, which predicts corresponding speech from talking face images, has witnessed significant progress with various models and training strategies in a series of independent studies. However, existing studies can not achieve voice control under zero-shot condition, because extra speaker embeddings need to be extracted from natural reference speech and are unavailable when only the silent video of an unseen speaker is given. In this paper, we propose a zero-shot personalized Lip2Speech synthesis method, in which face images control speaker identities. A variational autoencoder is adopted to disentangle the speaker identity and linguistic content representations, which enables speaker embeddings to control the voice characteristics of synthetic speech for unseen speakers. Furthermore, we propose associated cross-modal representation learning to promote the ability of face-based speaker embeddings (FSE) on voice control. Extensive experiments verify the effectiveness of the proposed method whose synthetic utterances are more natural and matching with the personality of input video than the compared methods. To our best knowledge, this paper makes the first attempt on zero-shot personalized Lip2Speech synthesis with a face image rather than reference audio to control voice characteristics.

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