SDAIMar 9

Gender Fairness in Audio Deepfake Detection: Performance and Disparity Analysis

arXiv:2603.090072 citationsh-index: 11
Predicted impact top 73% in SD · last 90 daysOriginality Synthesis-oriented
AI Analysis

This work addresses fairness issues in audio deepfake detection systems, which is important for preventing identity theft and impersonation, though it is incremental as it focuses on evaluation rather than proposing new methods.

The paper analyzed gender fairness in audio deepfake detection models using the ASVspoof 5 dataset, finding that while overall error rates (EER) showed minimal gender differences, fairness metrics revealed significant disparities in error distribution that standard metrics missed.

Audio deepfake detection aims to detect real human voices from those generated by Artificial Intelligence (AI) and has emerged as a significant problem in the field of voice biometrics systems. With the ever-improving quality of synthetic voice, the probability of such a voice being exploited for illicit practices like identity thest and impersonation increases. Although significant progress has been made in the field of Audio Deepfake Detection in recent times, the issue of gender bias remains underexplored and in its nascent stage In this paper, we have attempted a thorough analysis of gender dependent performance and fairness in audio deepfake detection models. We have used the ASVspoof 5 dataset and train a ResNet-18 classifier and evaluate detection performance across four different audio features, and compared the performance with baseline AASIST model. Beyond conventional metrics such as Equal Error Rate (EER %), we incorporated five established fairness metrics to quantify gender disparities in the model. Our results show that even when the overall EER difference between genders appears low, fairness-aware evaluation reveals disparities in error distribution that are obscured by aggregate performance measures. These findings demonstrate that reliance on standard metrics is unreliable, whereas fairness metrics provide critical insights into demographic-specific failure modes. This work highlights the importance of fairness-aware evaluation for developing a more equitable, robust, and trustworthy audio deepfake detection system.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes