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📄 Abstract
Abstract: Proactive Deepfake detection via robust watermarks has seen interest ever
since passive Deepfake detectors encountered challenges in identifying
high-quality synthetic images. However, while demonstrating reasonable
detection performance, they lack localization functionality and explainability
in detection results. Additionally, the unstable robustness of watermarks can
significantly affect the detection performance. In this study, we propose novel
fractal watermarks for proactive Deepfake detection and localization, namely
FractalForensics. Benefiting from the characteristics of fractals, we devise a
parameter-driven watermark generation pipeline that derives fractal-based
watermarks and performs one-way encryption of the selected parameters.
Subsequently, we propose a semi-fragile watermarking framework for watermark
embedding and recovery, trained to be robust against benign image processing
operations and fragile when facing Deepfake manipulations in a black-box
setting. Moreover, we introduce an entry-to-patch strategy that implicitly
embeds the watermark matrix entries into image patches at corresponding
positions, achieving localization of Deepfake manipulations. Extensive
experiments demonstrate satisfactory robustness and fragility of our approach
against common image processing operations and Deepfake manipulations,
outperforming state-of-the-art semi-fragile watermarking algorithms and passive
detectors for Deepfake detection. Furthermore, by highlighting the areas
manipulated, our method provides explainability for the proactive Deepfake
detection results.
Key Contributions
Introduces FractalForensics, a novel approach for proactive deepfake detection and localization using fractal watermarks. It addresses limitations of existing methods by providing localization, explainability, and improved robustness against benign image processing, while remaining fragile to deepfake manipulations.
Business Value
Provides a robust mechanism for verifying the authenticity of digital media, combating misinformation and protecting against malicious use of deepfakes. This is critical for trust in online content, journalism, and legal evidence.