2022
DOI: 10.48550/arxiv.2202.03586
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Fair SA: Sensitivity Analysis for Fairness in Face Recognition

Abstract: As the use of deep learning in high impact domains becomes ubiquitous, it is increasingly important to assess the resilience of models. One such high impact domain is that of face recognition, with real world applications involving images affected by various degradations, such as motion blur or high exposure. Moreover, images captured across different attributes, such as gender and race, can also challenge the robustness of a face recognition algorithm. While traditional summary statistics suggest that the agg… Show more

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