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FFR_FD: Effective and fast detection of DeepFakes via feature point defects
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NSTL
Elsevier
DeepFakes are widespread on social networks, and they result in severe information concerns. Although various detection methods have been proposed, there are still practical limitations. Previous specific artifact-based methods were insufficient to capture finegrained features, which limited their effectiveness against advanced DeepFakes. Current DNN-based detectors tend to trade high costs for performance improvement, and are not efficient enough, given that DeepFakes can be created easily by mobile apps, and DNNbased models require expensive computational resources. Furthermore, most methods lack generalizability under the cross-dataset scenario. In this work, we instead mine the more subtle and generalized defects of DeepFakes and propose the fused facial region_feature descriptor (FFR_FD), which is only a vector of the discriminative feature description, for effective and fast DeepFake detection. We show that DeepFake faces have fewer feature points than real ones, especially in facial regions. FFR_FD capitalizes on such key observations, and thus has strong generalizability. We train a random forest classifier with FFR_FD to achieve efficient detection. Extensive experiments on six large-scale DeepFake datasets demonstrate the effectiveness of our lightweight method. Our model generalizes well on the challenging Celeb-DF (v2) dataset, with 0.706 AUC, which is superior to most stateof-the-art methods. (c) 2022 Elsevier Inc. All rights reserved.