计算机视觉在刑事司法系统中的应用

Sophie Noiret, J. Lumetzberger, M. Kampel
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引用次数: 4

摘要

在过去几年中,涉及人工智能驱动的警务工作的歧视性做法一直是许多争议的主题,COMPAS、PredPol和ShotSpotter等算法被指责不公平地影响了少数群体。与此同时,机器学习中的公平性问题,特别是计算机视觉中的公平性问题,已经成为越来越多学术著作的主题。在本文中,我们研究这些区域是如何相交的。我们提供资料说明这些做法是如何产生的以及减轻这些做法的困难。然后,我们检查了目前正在开发的三个应用程序,以了解它们对公平构成的风险以及如何减轻这些风险。
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Bias and Fairness in Computer Vision Applications of the Criminal Justice System
Discriminatory practices involving AI -driven police work have been the subject of much controversies in the past few years, with algorithms such as COMPAS, PredPol and ShotSpotter being accused of unfairly impacting minority groups. At the same time, the issues of fairness in machine learning, and in particular in computer vision, have been the subject of a growing number of academic works. In this paper, we examine how these area intersect. We provide information on how these practices have come to exist and the difficulties in alleviating them. We then examine three applications currently in development to understand what risks they pose to fairness and how those risks can be mitigated.
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