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arXiv 提交日期: 2026-04-29
📄 Abstract - GIFGuard: Proactive Forensics against Deepfakes in Facial GIFs via Spatiotemporal Watermarking

The rapid evolution of deepfake technology poses an unprecedented threat to the authenticity of Graphics Interchange Format (GIF) imagery, which serves as a representative of short-loop temporal media in social networks. However, existing proactive forensics works are designed for static images, which limits their applicability to animated GIFs. To bridge this gap, we propose GIFGuard, the first spatiotemporal watermarking framework tailored for deepfake proactive forensics in GIFs. In the embedding stage, we propose the Spatiotemporal Adaptive Residual Encoder (STARE) to ensure robustness against high-level semantic tampering. It employs a 3D convolutional backbone with adaptive channel recalibration to capture globally coherent temporal dependencies. In the extraction stage, we design the Deep Integrity Restoration Decoder (DIRD). It utilizes a spatiotemporal hourglass architecture equipped with 3D attention to restore latent features, allowing for the accurate extraction of watermark signals even under severe facial manipulation. Furthermore, we construct GIFfaces, the first large-scale benchmark dataset curated for GIF proactive forensics to facilitate research in this domain. Extensive results show that GIFGuard achieves high-fidelity visual quality and remarkable robustness performance against deepfakes. Related code and dataset will be released.

顶级标签: machine learning computer vision multi-modal
详细标签: deepfake detection watermarking spatiotemporal gif forensics 或 搜索:

GIFGuard:通过时空水印技术主动检测面部GIF中的深度伪造 / GIFGuard: Proactive Forensics against Deepfakes in Facial GIFs via Spatiotemporal Watermarking


1️⃣ 一句话总结

本文提出了一种名为GIFGuard的时空水印框架,专门用于检测GIF动画中的深度伪造,通过创新的编码器和解码器结构,在保证视觉质量的同时,能有效抵御各种面部篡改,并建立了首个专门的GIF深度伪造检测基准数据集。

源自 arXiv: 2604.26519