GRACE: Graph-Regularized Attentive Convolutional Entanglement with Laplacian Smoothing for Robust DeepFake Video Detection
Chih-Chung Hsu, Shao-Ning Chen, Mei-Hsuan Wu, Yi-Fang Wang, Chia-Ming, Lee, Yi-Shiuan Chou

TL;DR
This paper presents GRACE, a novel graph-regularized attentive convolutional method that enhances DeepFake video detection robustness against noisy and degraded face sequences by leveraging graph Laplacian smoothing.
Contribution
Introduces GRACE, combining graph Laplacian smoothing with attentive convolutional entanglement to improve DeepFake detection in noisy conditions.
Findings
Achieves state-of-the-art detection accuracy on noisy DeepFake videos.
Effectively suppresses noise patterns in facial features.
Demonstrates robustness against adversarial attacks.
Abstract
As DeepFake video manipulation techniques escalate, posing profound threats, the urgent need to develop efficient detection strategies is underscored. However, one particular issue lies with facial images being mis-detected, often originating from degraded videos or adversarial attacks, leading to unexpected temporal artifacts that can undermine the efficacy of DeepFake video detection techniques. This paper introduces a novel method for robust DeepFake video detection, harnessing the power of the proposed Graph-Regularized Attentive Convolutional Entanglement (GRACE) based on the graph convolutional network with graph Laplacian to address the aforementioned challenges. First, conventional Convolution Neural Networks are deployed to perform spatiotemporal features for the entire video. Then, the spatial and temporal features are mutually entangled by constructing a graph with sparse…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis · Domain Adaptation and Few-Shot Learning
MethodsConvolution
