SHIELD: A Secure and Highly Enhanced Integrated Learning for Robust Deepfake Detection against Adversarial Attacks
Kutub Uddin, Awais Khan, Muhammad Umar Farooq, Khalid Malik

TL;DR
This paper introduces SHIELD, a collaborative learning framework that significantly enhances deepfake audio detection robustness against adversarial attacks, outperforming existing methods across multiple datasets and attack scenarios.
Contribution
The paper proposes a novel collaborative learning approach with auxiliary generative models to defend against generative AF attacks in deepfake audio detection.
Findings
SHIELD reduces attack success rates significantly across datasets.
Achieves high detection accuracy in both match and mismatch scenarios.
Robust against various generative models and attack techniques.
Abstract
Audio plays a crucial role in applications like speaker verification, voice-enabled smart devices, and audio conferencing. However, audio manipulations, such as deepfakes, pose significant risks by enabling the spread of misinformation. Our empirical analysis reveals that existing methods for detecting deepfake audio are often vulnerable to anti-forensic (AF) attacks, particularly those attacked using generative adversarial networks. In this article, we propose a novel collaborative learning method called SHIELD to defend against generative AF attacks. To expose AF signatures, we integrate an auxiliary generative model, called the defense (DF) generative model, which facilitates collaborative learning by combining input and output. Furthermore, we design a triplet model to capture correlations for real and AF attacked audios with real-generated and attacked-generated audios using…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications · Digital Media Forensic Detection
