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Racial Faces in-the-Wild: Reducing Racial Bias by Information Maximization Adaptation Network

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arxiv 1812.00194 v2 pith:VATK7NXX submitted 2018-12-01 cs.CV

Racial Faces in-the-Wild: Reducing Racial Bias by Information Maximization Adaptation Network

classification cs.CV
keywords racialbiasinformationadaptationdeepnetworkacrossdatabases
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Racial bias is an important issue in biometric, but has not been thoroughly studied in deep face recognition. In this paper, we first contribute a dedicated dataset called Racial Faces in-the-Wild (RFW) database, on which we firmly validated the racial bias of four commercial APIs and four state-of-the-art (SOTA) algorithms. Then, we further present the solution using deep unsupervised domain adaptation and propose a deep information maximization adaptation network (IMAN) to alleviate this bias by using Caucasian as source domain and other races as target domains. This unsupervised method simultaneously aligns global distribution to decrease race gap at domain-level, and learns the discriminative target representations at cluster level. A novel mutual information loss is proposed to further enhance the discriminative ability of network output without label information. Extensive experiments on RFW, GBU, and IJB-A databases show that IMAN successfully learns features that generalize well across different races and across different databases.

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    Adaptive Calibration maps cosine similarities to probabilities using local context, improving accuracy and fairness in facial recognition without demographic metadata.