When Deepfake Detection Meets Graph Neural Network:a Unified and Lightweight Learning Framework
By: Haoyu Liu , Chaoyu Gong , Mengke He and more
Potential Business Impact:
Finds fake videos using smart video tricks.
The proliferation of generative video models has made detecting AI-generated and manipulated videos an urgent challenge. Existing detection approaches often fail to generalize across diverse manipulation types due to their reliance on isolated spatial, temporal, or spectral information, and typically require large models to perform well. This paper introduces SSTGNN, a lightweight Spatial-Spectral-Temporal Graph Neural Network framework that represents videos as structured graphs, enabling joint reasoning over spatial inconsistencies, temporal artifacts, and spectral distortions. SSTGNN incorporates learnable spectral filters and temporal differential modeling into a graph-based architecture, capturing subtle manipulation traces more effectively. Extensive experiments on diverse benchmark datasets demonstrate that SSTGNN not only achieves superior performance in both in-domain and cross-domain settings, but also offers strong robustness against unseen manipulations. Remarkably, SSTGNN accomplishes these results with up to 42.4$\times$ fewer parameters than state-of-the-art models, making it highly lightweight and scalable for real-world deployment.
Similar Papers
A Hybrid Deep Learning and Forensic Approach for Robust Deepfake Detection
CV and Pattern Recognition
Finds fake videos by combining clues.
Generative Dynamic Graph Representation Learning for Conspiracy Spoofing Detection
Machine Learning (CS)
Catches tricky stock market cheaters by watching connections.
Simple and Efficient Heterogeneous Temporal Graph Neural Network
Machine Learning (CS)
Makes computers understand changing online connections faster.