ABSTRACT To address the critical security challenges in AI face‐swap detection—particularly the trade‐off between model lightweighting and robustness enhancement, coupled with insufficient generalization against adversarial attacks—this study proposes a security‐oriented multidimensional feature fusion framework for real‐time forgery identification. First, five complementary feature dimensions—mirror similarity, geometric asymmetry, frequency‐domain anomalies, image quality artifacts, and DeepFace confidence deviation—are integrated into a security‐oriented feature set. This set targets inherent vulnerabilities in face‐swap forgeries, enabling multiperspective identification of tampered faces and reducing the risk of missed detections or false positives in security‐sensitive scenarios; Second, Design of an adaptive security threshold mechanism based on dynamic confidence intervals, which continuously optimizes decision boundaries through online statistical modeling to strengthen defense against unseen attacks; Finally, Implementation of a lightweight random forest ensemble learning paradigm that delivers millisecond‐level inference while maintaining interpretability. Rigorous evaluations on benchmark datasets (FaceForensics++ and Celeb‐DF) demonstrate superior performance over conventional ResNet50 approaches, achieving 95.1% average accuracy and 93.4% F1‐score with merely 68 ms per‐frame processing latency. Notably, our framework exhibits exceptional security resilience in countering advanced deepfake assaults.
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Li‐ting Zhang
Hou‐fu Zhang
Security and Privacy
Artificial Intelligence in Medicine (Canada)
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Zhang et al. (Tue,) studied this question.
www.synapsesocial.com/papers/69a75c8bc6e9836116a2581f — DOI: https://doi.org/10.1002/spy2.70197
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