Saved in:
Bibliographic Details
Main Authors: Cheng, Jikang, Ai, Jiaxin, Han, Zhen, Liang, Chao, Zou, Qin, Wang, Zhongyuan, Wang, Qian
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.06635
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929457625825280
author Cheng, Jikang
Ai, Jiaxin
Han, Zhen
Liang, Chao
Zou, Qin
Wang, Zhongyuan
Wang, Qian
author_facet Cheng, Jikang
Ai, Jiaxin
Han, Zhen
Liang, Chao
Zou, Qin
Wang, Zhongyuan
Wang, Qian
contents The face swapping technique based on deepfake methods poses significant social risks to personal identity security. While numerous deepfake detection methods have been proposed as countermeasures against malicious face swapping, they can only output binary labels (Fake/Real) for distinguishing fake content without reliable and traceable evidence. To achieve visual forensics and target face attribution, we propose a novel task named face retracing, which considers retracing the original target face from the given fake one via inverse mapping. Toward this goal, we propose an IDRetracor that can retrace arbitrary original target identities from fake faces generated by multiple face swapping methods. Specifically, we first adopt a mapping resolver to perceive the possible solution space of the original target face for the inverse mappings. Then, we propose mapping-aware convolutions to retrace the original target face from the fake one. Such convolutions contain multiple kernels that can be combined under the control of the mapping resolver to tackle different face swapping mappings dynamically. Extensive experiments demonstrate that the IDRetracor exhibits promising retracing performance from both quantitative and qualitative perspectives.
format Preprint
id arxiv_https___arxiv_org_abs_2408_06635
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle IDRetracor: Towards Visual Forensics Against Malicious Face Swapping
Cheng, Jikang
Ai, Jiaxin
Han, Zhen
Liang, Chao
Zou, Qin
Wang, Zhongyuan
Wang, Qian
Computer Vision and Pattern Recognition
The face swapping technique based on deepfake methods poses significant social risks to personal identity security. While numerous deepfake detection methods have been proposed as countermeasures against malicious face swapping, they can only output binary labels (Fake/Real) for distinguishing fake content without reliable and traceable evidence. To achieve visual forensics and target face attribution, we propose a novel task named face retracing, which considers retracing the original target face from the given fake one via inverse mapping. Toward this goal, we propose an IDRetracor that can retrace arbitrary original target identities from fake faces generated by multiple face swapping methods. Specifically, we first adopt a mapping resolver to perceive the possible solution space of the original target face for the inverse mappings. Then, we propose mapping-aware convolutions to retrace the original target face from the fake one. Such convolutions contain multiple kernels that can be combined under the control of the mapping resolver to tackle different face swapping mappings dynamically. Extensive experiments demonstrate that the IDRetracor exhibits promising retracing performance from both quantitative and qualitative perspectives.
title IDRetracor: Towards Visual Forensics Against Malicious Face Swapping
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2408.06635