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Four Principles of Explainable AI as Applied to Biometrics and Facial Forensic Algorithms

3 February 2020
P. Phillips
Mark A. Przybocki
    CVBM
ArXiv (abs)PDFHTML
Abstract

Traditionally, researchers in automatic face recognition and biometric technologies have focused on developing accurate algorithms. With this technology being integrated into operational systems, engineers and scientists are being asked, do these systems meet societal norms? The origin of this line of inquiry is `trust' of artificial intelligence (AI) systems. In this paper, we concentrate on adapting explainable AI to face recognition and biometrics, and we present four principles of explainable AI to face recognition and biometrics. The principles are illustrated by four\it{four}four case studies, which show the challenges and issues in developing algorithms that can produce explanations.

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