Face2Parts: Exploring Coarse-to-Fine Inter-Regional Facial Dependencies for Generalized Deepfake Detection
Kutub Uddin, Nusrat Tasnim, Byung Tae Oh

TL;DR
Face2Parts introduces a hierarchical, coarse-to-fine feature extraction method focusing on facial regions to enhance deepfake detection accuracy across diverse datasets.
Contribution
The paper proposes a novel hybrid approach leveraging inter-regional facial dependencies with hierarchical features, channel-attention, and deep triplet learning for improved deepfake detection.
Findings
Achieves high average AUC scores across multiple benchmark datasets.
Effectively captures inter-regional facial dependencies for better generalization.
Outperforms existing deepfake detection methods in various settings.
Abstract
Multimedia data, particularly images and videos, is integral to various applications, including surveillance, visual interaction, biometrics, evidence gathering, and advertising. However, amateur or skilled counterfeiters can simulate them to create deepfakes, often for slanderous motives. To address this challenge, several forensic methods have been developed to ensure the authenticity of the content. The effectiveness of these methods depends on their focus, with challenges arising from the diverse nature of manipulations. In this article, we analyze existing forensic methods and observe that each method has unique strengths in detecting deepfake traces by focusing on specific facial regions, such as the frame, face, lips, eyes, or nose. Considering these insights, we propose a novel hybrid approach called Face2Parts based on hierarchical feature representation () that takes…
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