Fairness Evaluation in Deepfake Detection Models using Metamorphic Testing
Muxin Pu, Meng Yi Kuan, Nyee Thoang Lim, Chun Yong Chong, Mei Kuan Lim

TL;DR
This paper evaluates the fairness of deepfake detection models, specifically MesoInception-4, under makeup anomalies using metamorphic testing to identify potential gender biases and robustness issues.
Contribution
It introduces a metamorphic testing approach to assess how input variations like makeup affect deepfake detection fairness and robustness, highlighting gender bias concerns.
Findings
Makeup perturbations do not significantly alter model outputs
Potential gender biases are revealed in the model's decisions
Metamorphic testing uncovers robustness issues in deepfake detection
Abstract
Fairness of deepfake detectors in the presence of anomalies are not well investigated, especially if those anomalies are more prominent in either male or female subjects. The primary motivation for this work is to evaluate how deepfake detection model behaves under such anomalies. However, due to the black-box nature of deep learning (DL) and artificial intelligence (AI) systems, it is hard to predict the performance of a model when the input data is modified. Crucially, if this defect is not addressed properly, it will adversely affect the fairness of the model and result in discrimination of certain sub-population unintentionally. Therefore, the objective of this work is to adopt metamorphic testing to examine the reliability of the selected deepfake detection model, and how the transformation of input variation places influence on the output. We have chosen MesoInception-4, a…
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Taxonomy
TopicsVisual Attention and Saliency Detection · Face recognition and analysis · Face Recognition and Perception
