Second Opinion: Supporting Last-Mile Person Identification with Crowdsourcing and Face Recognition

V. Mohanty, Kareem Abdol-Hamid, C. Ebersohl, K. Luther
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引用次数: 9

Abstract

As AI-based face recognition technologies are increasingly adopted for high-stakes applications like locating suspected criminals, public concerns about the accuracy of these technologies have grown as well. These technologies often present a human expert with a shortlist of high-confidence candidate faces from which the expert must select correct match(es) while avoiding false positives, which we term the “last-mile problem.” We propose Second Opinion, a web-based software tool that employs a novel crowdsourcing workflow inspired by cognitive psychology, seed-gather-analyze, to assist experts in solving the last-mile problem. We evaluated Second Opinion with a mixed-methods lab study involving 10 experts and 300 crowd workers who collaborate to identify people in historical photos. We found that crowds can eliminate 75% of false positives from the highest-confidence candidates suggested by face recognition, and that experts were enthusiastic about using Second Opinion in their work. We also discuss broader implications for crowd–AI interaction and crowdsourced person identification.
第二意见:用众包和人脸识别技术支持最后一英里的人识别
随着基于人工智能的人脸识别技术越来越多地用于高风险应用,如定位嫌疑人,公众对这些技术的准确性的担忧也在增加。这些技术通常会向人类专家提供一份高可信度候选面孔的短名单,专家必须从中选择正确的匹配,同时避免误报,我们称之为“最后一英里问题”。我们提出第二意见,一个基于网络的软件工具,它采用了一种受认知心理学启发的新颖的众包工作流程,种子收集-分析,以帮助专家解决最后一英里的问题。我们通过混合方法的实验室研究对Second Opinion进行了评估,其中包括10名专家和300名人群工作者,他们合作识别历史照片中的人物。我们发现,人群可以从人脸识别建议的最高可信度候选人中消除75%的误报,专家们热衷于在他们的工作中使用第二意见。我们还讨论了对人群-人工智能互动和众包人员识别的更广泛影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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