Multi-spectral Class Center Network for Face Manipulation Detection and Localization
Changtao Miao, Qi Chu, Zhentao Tan, Zhenchao Jin, Tao Gong, Wanyi, Zhuang, Yue Wu, Bin Liu, Honggang Hu, Nenghai Yu

TL;DR
This paper introduces MSCCNet, a novel multi-spectral network leveraging frequency information for improved face manipulation detection and localization, outperforming existing methods on benchmark datasets.
Contribution
The paper proposes a Multi-Spectral Class Center module and a multi-level features aggregation approach to enhance pixel-level forgery localization using multi-frequency spectrum data.
Findings
Effective identification of tampered regions using multi-frequency features.
Superior performance on FF++ and Dolos datasets.
Enhanced explainability in face manipulation localization.
Abstract
As deepfake content proliferates online, advancing face manipulation forensics has become crucial. To combat this emerging threat, previous methods mainly focus on studying how to distinguish authentic and manipulated face images. Although impressive, image-level classification lacks explainability and is limited to specific application scenarios, spurring recent research on pixel-level prediction for face manipulation forensics. However, existing forgery localization methods suffer from exploring frequency-based forgery traces in the localization network. In this paper, we observe that multi-frequency spectrum information is effective for identifying tampered regions. To this end, a novel Multi-Spectral Class Center Network (MSCCNet) is proposed for face manipulation detection and localization. Specifically, we design a Multi-Spectral Class Center (MSCC) module to learn more…
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Taxonomy
TopicsFace recognition and analysis · Digital Media Forensic Detection · Facial Nerve Paralysis Treatment and Research
