SensitiveLoss: Improving Accuracy and Fairness of Face Representations with Discrimination-Aware Deep Learning

22 Apr 2020Ignacio SernaAythami MoralesJulian FierrezManuel CebrianNick ObradovichIyad Rahwan

We propose a new discrimination-aware learning method to improve both accuracy and fairness of face recognition algorithms. The most popular face recognition benchmarks assume a distribution of subjects without paying much attention to their demographic attributes... (read more)

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