法医人脸比对任务中自动化辅助性能的基准测试。

IF 3.1 2区 工程技术 Q2 ENGINEERING, INDUSTRIAL Applied Ergonomics Pub Date : 2024-08-08 DOI:10.1016/j.apergo.2024.104364
Megan L. Bartlett , Daniel J. Carragher , Peter J.B. Hancock , Jason S. McCarley
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引用次数: 0

摘要

Carragher 和 Hancock(2023 年)研究了在自动面部识别系统(AFRS)辅助下,个体在一对一人脸匹配任务中的表现。在五次预先登记的实验中,他们发现了次优辅助表现的证据,有自动面部识别系统辅助的个体始终无法达到自动面部识别系统单独达到的表现水平。目前的研究对这些数据进行了重新分析(Carragher 和 Hancock,2023 年),并根据一系列协作决策统计模型(跨越一系列效率水平)对自动化辅助性能进行了基准测试。使用贝叶斯分层信号检测模型进行的分析表明,协作绩效的效率非常低,与测试的最次优自动化依赖模型最为接近。这种结果模式概括了之前关于在视觉搜索、目标检测、感官辨别和数字估算决策任务中人机互动次优的报道。目前的研究首次提供了一对一人脸匹配任务中自动化辅助性能的基准。
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Benchmarking automation-aided performance in a forensic face matching task

Carragher and Hancock (2023) investigated how individuals performed in a one-to-one face matching task when assisted by an Automated Facial Recognition System (AFRS). Across five pre-registered experiments they found evidence of suboptimal aided performance, with AFRS-assisted individuals consistently failing to reach the level of performance the AFRS achieved alone. The current study reanalyses these data (Carragher and Hancock, 2023), to benchmark automation-aided performance against a series of statistical models of collaborative decision making, spanning a range of efficiency levels. Analyses using a Bayesian hierarchical signal detection model revealed that collaborative performance was highly inefficient, falling closest to the most suboptimal models of automation dependence tested. This pattern of results generalises previous reports of suboptimal human-automation interaction across a range of visual search, target detection, sensory discrimination, and numeric estimation decision-making tasks. The current study is the first to provide benchmarks of automation-aided performance in the one-to-one face matching task.

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来源期刊
Applied Ergonomics
Applied Ergonomics 工程技术-工程:工业
CiteScore
7.50
自引率
9.40%
发文量
248
审稿时长
53 days
期刊介绍: Applied Ergonomics is aimed at ergonomists and all those interested in applying ergonomics/human factors in the design, planning and management of technical and social systems at work or leisure. Readership is truly international with subscribers in over 50 countries. Professionals for whom Applied Ergonomics is of interest include: ergonomists, designers, industrial engineers, health and safety specialists, systems engineers, design engineers, organizational psychologists, occupational health specialists and human-computer interaction specialists.
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