Litcius/Paper detail

ADD: Frequency Attention and Multi-View Based Knowledge Distillation to Detect Low-Quality Compressed Deepfake Images

Le Minh Binh, Simon S. Woo

2022Proceedings of the AAAI Conference on Artificial Intelligence55 citationsDOIOpen Access PDF

Abstract

Despite significant advancements of deep learning-based forgery detectors for distinguishing manipulated deepfake images, most detection approaches suffer from moderate to significant performance degradation with low-quality compressed deepfake images. Because of the limited information in low-quality images, detecting low-quality deepfake remains an important challenge. In this work, we apply frequency domain learning and optimal transport theory in knowledge distillation (KD) to specifically improve the detection of low-quality compressed deepfake images. We explore transfer learning capability in KD to enable a student network to learn discriminative features from low-quality images effectively. In particular, we propose the Attention-based Deepfake detection Distiller (ADD), which consists of two novel distillations: 1) frequency attention distillation that effectively retrieves the removed high-frequency components in the student network, and 2) multi-view attention distillation that creates multiple attention vectors by slicing the teacher’s and student’s tensors under different views to transfer the teacher tensor’s distribution to the student more efficiently. Our extensive experimental results demonstrate that our approach outperforms state-of-the-art baselines in detecting low-quality compressed deepfake images.

Topics & Concepts

Computer scienceArtificial intelligenceDistillationQuality (philosophy)Discriminative modelTransfer of learningMachine learningDeep learningCompressed sensingPattern recognition (psychology)ChemistryChromatographyEpistemologyPhilosophyDigital Media Forensic DetectionAdversarial Robustness in Machine LearningGenerative Adversarial Networks and Image Synthesis