LGCLSDASMay 23, 2025

What You Read Isn't What You Hear: Linguistic Sensitivity in Deepfake Speech Detection

arXiv:2505.17513v16 citationsh-index: 1Has CodeEMNLP
Originality Highly original
AI Analysis

This addresses a critical gap in audio anti-spoofing systems for security applications, highlighting a real-world vulnerability that could enable fraud and impersonation attacks.

The paper tackles the problem of linguistic variation in deepfake speech detection by introducing transcript-level adversarial attacks, revealing that minor linguistic perturbations can degrade detection accuracy significantly, with one commercial detector dropping from 100% to 32% accuracy.

Recent advances in text-to-speech technologies have enabled realistic voice generation, fueling audio-based deepfake attacks such as fraud and impersonation. While audio anti-spoofing systems are critical for detecting such threats, prior work has predominantly focused on acoustic-level perturbations, leaving the impact of linguistic variation largely unexplored. In this paper, we investigate the linguistic sensitivity of both open-source and commercial anti-spoofing detectors by introducing transcript-level adversarial attacks. Our extensive evaluation reveals that even minor linguistic perturbations can significantly degrade detection accuracy: attack success rates surpass 60% on several open-source detector-voice pairs, and notably one commercial detection accuracy drops from 100% on synthetic audio to just 32%. Through a comprehensive feature attribution analysis, we identify that both linguistic complexity and model-level audio embedding similarity contribute strongly to detector vulnerability. We further demonstrate the real-world risk via a case study replicating the Brad Pitt audio deepfake scam, using transcript adversarial attacks to completely bypass commercial detectors. These results highlight the need to move beyond purely acoustic defenses and account for linguistic variation in the design of robust anti-spoofing systems. All source code will be publicly available.

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