认知衰退驾驶员驾驶模拟结果自动评估的初步结果

Bruce Wallace, S. Gagnon, A. Stinchcombe, Stephanie Yamin, R. Goubran, F. Knoefel
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引用次数: 5

摘要

与衰老相关的变化和病理影响认知和驾驶能力是个人,他们的家庭和一般人群的重大问题。确保不安全的司机被吊销驾照或接受他们所需的额外培训,对公众的安全至关重要。另一方面,允许一个人在安全的情况下继续开车对个人的社会、情感和认知健康都很重要。本文介绍了一项初步研究的结果,以查看基于训练有素的机器学习模型的自动评估是否可以正确地将模拟器驱动器分类为安全或不安全,并与专家驾驶员评估意见进行比较。结果显示,与47名司机的专家相比,机器学习能够达到85%的准确率,其中包括20名健康对照组,9名被诊断为路易体痴呆,18名被诊断为轻度阿尔茨海默氏型痴呆。这项工作显示了自动驾驶模拟评估的潜力,可以减轻临床医生在驾驶安全评估方面的负担。
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Preliminary Results for the Automated Assessment of Driving Simulation Results for Drivers with Cognitive Decline
Aging related changes and pathology affecting cognition and the ability to drive are significant issues for individuals, their families and the general population. Ensuring that unsafe drivers have their license suspended or get the additional training they need is important for the safety of the general population. On the other hand, allowing a person to continue to drive as long as they are safe is important for the social, emotional and cognitive wellbeing of the individual. This paper presents results of a preliminary study to see if an automated assessment based on trained machine learning models can correctly classify simulator drives as safe or unsafe in comparison to expert driver assessment opinion. The results show that the machine learning is able to achieve 85% accuracy in comparison to the experts for a combined group of 47 drivers that included 20 Healthy Controls, 9 diagnosed with Lewy Body Dementia and 18 diagnosed with mild Dementia of Alzheimer's Type. This work shows the potential for automated driver simulation assessment, which could reduce the burden on clinicians regarding driver safety evaluation.
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