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Continual Face Forgery Detection via Historical Distribution Preserving

About

Face forgery techniques have advanced rapidly and pose serious security threats. Existing face forgery detection methods try to learn generalizable features, but they still fall short of practical application. Additionally, finetuning these methods on historical training data is resource-intensive in terms of time and storage. In this paper, we focus on a novel and challenging problem: Continual Face Forgery Detection (CFFD), which aims to efficiently learn from new forgery attacks without forgetting previous ones. Specifically, we propose a Historical Distribution Preserving (HDP) framework that reserves and preserves the distributions of historical faces. To achieve this, we use universal adversarial perturbation (UAP) to simulate historical forgery distribution, and knowledge distillation to maintain the distribution variation of real faces across different models. We also construct a new benchmark for CFFD with three evaluation protocols. Our extensive experiments on the benchmarks show that our method outperforms the state-of-the-art competitors.

Ke Sun, Shen Chen, Taiping Yao, Xiaoshuai Sun, Shouhong Ding, Rongrong Ji• 2023

Related benchmarks

TaskDatasetResultRank
Face Forgery DetectionProtocol 2 Forgery Type Incremental: Hybrid, FR, FS, EFS
Hybrid Acc96.71
32
Face Forgery DetectionProtocol 1 Dataset Incremental: SDv21, FF++, DFDCP, CDF
SDv21 Score99.98
32
Deepfake DetectionDFD
Video AUC0.8441
23
Face Forgery DetectionSDv21, FF++, DFDCP (test)
Forgetting Rate (SDv21)9.43
6
Deepfake DetectionFakeAVCeleb
Frame-level AUC0.6535
4
Deepfake DetectionAverage DFD, UniFace, SDv15, FakeAVCeleb
AUC (Frame-level)69.39
4
Deepfake DetectionUniFace (DF40)
Frame-level AUC59.71
4
Deepfake DetectionSD DiffusionFace v15
Frame-level AUC72.11
4
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