CVJul 4, 2022

Identifying Rhythmic Patterns for Face Forgery Detection and Categorization

arXiv:2207.01199v17 citationsh-index: 53
Originality Highly original
AI Analysis

This addresses the problem of detecting AI-generated fake faces for security applications, representing an incremental improvement with a new method for a known bottleneck.

The paper tackles face forgery detection by analyzing rhythmic patterns from PPG signals in videos, achieving superior performance in detection and categorization through a novel framework.

With the emergence of GAN, face forgery technologies have been heavily abused. Achieving accurate face forgery detection is imminent. Inspired by remote photoplethysmography (rPPG) that PPG signal corresponds to the periodic change of skin color caused by heartbeat in face videos, we observe that despite the inevitable loss of PPG signal during the forgery process, there is still a mixture of PPG signals in the forgery video with a unique rhythmic pattern depending on its generation method. Motivated by this key observation, we propose a framework for face forgery detection and categorization consisting of: 1) a Spatial-Temporal Filtering Network (STFNet) for PPG signals filtering, and 2) a Spatial-Temporal Interaction Network (STINet) for constraint and interaction of PPG signals. Moreover, with insight into the generation of forgery methods, we further propose intra-source and inter-source blending to boost the performance of the framework. Overall, extensive experiments have proved the superiority of our method.

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