Feb. 2, 2024, 9:41 p.m. | Yue Zhang Ben Colman Ali Shahriyari Gaurav Bharaj

cs.CL updates on arXiv.org arxiv.org

State-of-the-art approaches rely on image-based features extracted via neural networks for the deepfake detection binary classification. While these approaches trained in the supervised sense extract likely fake features, they may fall short in representing unnatural `non-physical' semantic facial attributes -- blurry hairlines, double eyebrows, rigid eye pupils, or unnatural skin shading. However, such facial attributes are generally easily perceived by humans via common sense reasoning. Furthermore, image-based feature extraction methods that provide visual explanation via saliency maps can be hard …

art binary classification common sense cs.cl cs.cv deep fake deepfake detection extract fake features image networks neural networks reasoning semantic sense state via

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