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Main Authors: Sun, Rui-qing, Yao, Xingshan, Lan, Tian, Shi, Jia-Ling, Cui, Chen-Hao, Zhao, Hui-Yang, Wu, Zhijing, Yang, Chen, Mao, Xian-Ling
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.21019
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author Sun, Rui-qing
Yao, Xingshan
Lan, Tian
Shi, Jia-Ling
Cui, Chen-Hao
Zhao, Hui-Yang
Wu, Zhijing
Yang, Chen
Mao, Xian-Ling
author_facet Sun, Rui-qing
Yao, Xingshan
Lan, Tian
Shi, Jia-Ling
Cui, Chen-Hao
Zhao, Hui-Yang
Wu, Zhijing
Yang, Chen
Mao, Xian-Ling
contents State-of-the-art 3D-field video-referenced Talking Face Generation (TFG) methods synthesize high-fidelity personalized talking-face videos in real time by modeling 3D geometry and appearance from reference portrait video. This capability raises significant privacy concerns regarding malicious misuse of personal portraits. However, no efficient defense framework exists to protect such videos against 3D-field TFG methods. While image-based defenses could apply per-frame 2D perturbations, they incur prohibitive computational costs, severe video quality degradation, failing to disrupt 3D information for video protection. To address this, we propose a novel and efficient video defense framework against 3D-field TFG methods, which protects portrait video by perturbing the 3D information acquisition process while maintain high-fidelity video quality. Specifically, our method introduces: (1) a similarity-guided parameter sharing mechanism for computational efficiency, and (2) a multi-scale dual-domain attention module to jointly optimize spatial-frequency perturbations. Extensive experiments demonstrate that our proposed framework exhibits strong defense capability and achieves a 47x acceleration over the fastest baseline while maintaining high fidelity. Moreover, it remains robust against scaling operations and state-of-the-art purification attacks, and the effectiveness of our design choices is further validated through ablation studies. Our project is available at https://github.com/Richen7418/VDF.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21019
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Efficient and Robust Video Defense Framework against 3D-field Personalized Talking Face
Sun, Rui-qing
Yao, Xingshan
Lan, Tian
Shi, Jia-Ling
Cui, Chen-Hao
Zhao, Hui-Yang
Wu, Zhijing
Yang, Chen
Mao, Xian-Ling
Computer Vision and Pattern Recognition
State-of-the-art 3D-field video-referenced Talking Face Generation (TFG) methods synthesize high-fidelity personalized talking-face videos in real time by modeling 3D geometry and appearance from reference portrait video. This capability raises significant privacy concerns regarding malicious misuse of personal portraits. However, no efficient defense framework exists to protect such videos against 3D-field TFG methods. While image-based defenses could apply per-frame 2D perturbations, they incur prohibitive computational costs, severe video quality degradation, failing to disrupt 3D information for video protection. To address this, we propose a novel and efficient video defense framework against 3D-field TFG methods, which protects portrait video by perturbing the 3D information acquisition process while maintain high-fidelity video quality. Specifically, our method introduces: (1) a similarity-guided parameter sharing mechanism for computational efficiency, and (2) a multi-scale dual-domain attention module to jointly optimize spatial-frequency perturbations. Extensive experiments demonstrate that our proposed framework exhibits strong defense capability and achieves a 47x acceleration over the fastest baseline while maintaining high fidelity. Moreover, it remains robust against scaling operations and state-of-the-art purification attacks, and the effectiveness of our design choices is further validated through ablation studies. Our project is available at https://github.com/Richen7418/VDF.
title Efficient and Robust Video Defense Framework against 3D-field Personalized Talking Face
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2512.21019