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Towards Robust DeepFake Detection under Unstable Face Sequences: Adaptive Sparse Graph Embedding with Order-Free Representation and Explicit Laplacian Spectral Prior

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Ensuring the authenticity of video content remains challenging as DeepFake generation becomes increasingly realistic and robust against detection. Most existing detectors implicitly assume temporally consistent and clean facial sequences, an assumption that rarely holds in real-world scenarios where compression artifacts, occlusions, and adversarial attacks destabilize face detection and often lead to invalid or misdetected faces. To address these challenges, we propose a Laplacian-Regularized Graph Convolutional Network (LR-GCN) that robustly detects DeepFakes from noisy or unordered face sequences, while being trained only on clean facial data. Our method constructs an Order-Free Temporal Graph Embedding (OF-TGE) that organizes frame-wise CNN features into an adaptive sparse graph based on semantic affinities. Unlike traditional methods constrained by strict temporal continuity, OF-TGE captures intrinsic feature consistency across frames, making it resilient to shuffled, missing, or heavily corrupted inputs. We further impose a dual-level sparsity mechanism on both graph structure and node features to suppress the influence of invalid faces. Crucially, we introduce an explicit Graph Laplacian Spectral Prior that acts as a high-pass operator in the graph spectral domain, highlighting structural anomalies and forgery artifacts, which are then consolidated by a low-pass GCN aggregation. This sequential design effectively realizes a task-driven spectral band-pass mechanism that suppresses background information and random noise while preserving manipulation cues. Extensive experiments on FF++, Celeb-DFv2, and DFDC demonstrate that LR-GCN achieves state-of-the-art performance and significantly improved robustness under severe global and local disruptions, including missing faces, occlusions, and adversarially perturbed face detections.

Chih-Chung Hsu, Shao-Ning Chen, Chia-Ming Lee, Yi-Fang Wang, Yi-Shiuan Chou• 2025

Related benchmarks

TaskDatasetResultRank
Deepfake DetectionDFDC (test)
AUC76.9
87
Deepfake DetectionFF++ video-level 8 (test)
Accuracy96.2
40
Deepfake DetectionCeleb-DF 9 (test)
Accuracy98.9
30
Deepfake DetectionDFDC 10 (test)
Accuracy96.9
30
Deepfake DetectionFF++ Intra-dataset c23
AUC98.9
24
Deepfake DetectionCeleb-DF (test)--
24
Deepfake DetectionFF++ Sunglass Masking
Accuracy96
10
Deepfake DetectionFF++ Partial Blurring
Accuracy96
10
Deepfake DetectionFF++ Partial Noisy
Accuracy100
10
Deepfake DetectionFF++ Adversarial Attack
Accuracy91
10
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