Securing Social Media Against Deepfakes using Identity, Behavioral, and Geometric Signatures
Muhammad Umar Farooq, Awais Khan, Ijaz Ul Haq, and Khalid Mahmood, Malik

TL;DR
This paper introduces a holistic deepfake detection framework that combines identity, behavioral, and geometric signatures with a specialized classifier to improve generalization across diverse deepfake types on multiple datasets.
Contribution
The paper presents a novel feature descriptor and classifier, DBaGNet, that enhances deepfake detection generalization by integrating multiple signatures and using triplet loss for robust representation learning.
Findings
Significant performance improvements over state-of-the-art methods.
Effective cross-dataset generalization demonstrated.
Robust detection across six benchmark datasets.
Abstract
Trust in social media is a growing concern due to its ability to influence significant societal changes. However, this space is increasingly compromised by various types of deepfake multimedia, which undermine the authenticity of shared content. Although substantial efforts have been made to address the challenge of deepfake content, existing detection techniques face a major limitation in generalization: they tend to perform well only on specific types of deepfakes they were trained on.This dependency on recognizing specific deepfake artifacts makes current methods vulnerable when applied to unseen or varied deepfakes, thereby compromising their performance in real-world applications such as social media platforms. To address the generalizability of deepfake detection, there is a need for a holistic approach that can capture a broader range of facial attributes and manipulations beyond…
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Taxonomy
TopicsUser Authentication and Security Systems · Privacy, Security, and Data Protection
MethodsTriplet Loss
