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📄 Abstract
Abstract: Notwithstanding offering convenience and entertainment to society, Deepfake
face swapping has caused critical privacy issues with the rapid development of
deep generative models. Due to imperceptible artifacts in high-quality
synthetic images, passive detection models against face swapping in recent
years usually suffer performance damping regarding the generalizability issue
in cross-domain scenarios. Therefore, several studies have been attempted to
proactively protect the original images against malicious manipulations by
inserting invisible signals in advance. However, existing proactive defense
approaches demonstrate unsatisfactory results with respect to visual quality,
detection accuracy, and source tracing ability. In this study, to fulfill the
research gap, we propose a robust identity perceptual watermarking framework
that concurrently performs detection and source tracing against Deepfake face
swapping proactively. We innovatively assign identity semantics regarding the
image contents to the watermarks and devise an unpredictable and nonreversible
chaotic encryption system to ensure watermark confidentiality. The watermarks
are robustly encoded and recovered by jointly training an encoder-decoder
framework along with adversarial image manipulations. For a suspect image,
falsification is accomplished by justifying the consistency between the
content-matched identity perceptual watermark and the recovered robust
watermark, without requiring the ground-truth. Moreover, source tracing can be
accomplished based on the identity semantics that the recovered watermark
carries. Extensive experiments demonstrate state-of-the-art detection and
source tracing performance against Deepfake face swapping with promising
watermark robustness for both cross-dataset and cross-manipulation settings.
Key Contributions
Proposes a robust identity perceptual watermarking framework that proactively defends against deepfake face swapping by embedding invisible signals. It concurrently performs detection and source tracing, aiming to overcome limitations of existing methods in visual quality, accuracy, and tracing ability.
Business Value
Provides a proactive solution to combat malicious deepfakes, protecting individual identity and media integrity, which is crucial for trust in digital content and personal privacy.