Saved in:
Bibliographic Details
Main Authors: Shi, Yao, Xu, Yunfei, Suo, Hongbin, Wan, Yulong, Liu, Haifeng
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.02753
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914236035235840
author Shi, Yao
Xu, Yunfei
Suo, Hongbin
Wan, Yulong
Liu, Haifeng
author_facet Shi, Yao
Xu, Yunfei
Suo, Hongbin
Wan, Yulong
Liu, Haifeng
contents This paper discusses the task of face-based speech synthesis, a kind of personalized speech synthesis where the synthesized voices are constrained to perceptually match with a reference face image. Due to the lack of TTS-quality audio-visual corpora, previous approaches suffer from either low synthesis quality or domain mismatch induced by a knowledge transfer scheme. This paper proposes a new approach called Vclip that utilizes the facial-semantic knowledge of the CLIP encoder on noisy audio-visual data to learn the association between face and voice efficiently, achieving 89.63% cross-modal verification AUC score on Voxceleb testset. The proposed method then uses a retrieval-based strategy, combined with GMM-based speaker generation module for a downstream TTS system, to produce probable target speakers given reference images. Experimental results demonstrate that the proposed Vclip system in conjunction with the retrieval step can bridge the gap between face and voice features for face-based speech synthesis. And using the feedback information distilled from downstream TTS helps to synthesize voices that match closely with reference faces. Demos available at sos1sos2sixteen.github.io/vclip.
format Preprint
id arxiv_https___arxiv_org_abs_2601_02753
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Vclip: Face-based Speaker Generation by Face-voice Association Learning
Shi, Yao
Xu, Yunfei
Suo, Hongbin
Wan, Yulong
Liu, Haifeng
Audio and Speech Processing
This paper discusses the task of face-based speech synthesis, a kind of personalized speech synthesis where the synthesized voices are constrained to perceptually match with a reference face image. Due to the lack of TTS-quality audio-visual corpora, previous approaches suffer from either low synthesis quality or domain mismatch induced by a knowledge transfer scheme. This paper proposes a new approach called Vclip that utilizes the facial-semantic knowledge of the CLIP encoder on noisy audio-visual data to learn the association between face and voice efficiently, achieving 89.63% cross-modal verification AUC score on Voxceleb testset. The proposed method then uses a retrieval-based strategy, combined with GMM-based speaker generation module for a downstream TTS system, to produce probable target speakers given reference images. Experimental results demonstrate that the proposed Vclip system in conjunction with the retrieval step can bridge the gap between face and voice features for face-based speech synthesis. And using the feedback information distilled from downstream TTS helps to synthesize voices that match closely with reference faces. Demos available at sos1sos2sixteen.github.io/vclip.
title Vclip: Face-based Speaker Generation by Face-voice Association Learning
topic Audio and Speech Processing
url https://arxiv.org/abs/2601.02753