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Investigation of Driver Performance With Night-Vision and Pedestrian-Detection Systems—Part 2: Queuing Network Human Performance Modeling

机译:夜视和行人检测系统对驾驶员性能的研究—第2部分:排队网络人员绩效建模

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摘要

This paper introduces a queueing network-based computational model to explain driver performance in a pedestrian-detection task assisted with night-vision-enhancement systems. The computational cognitive model simulated the pedestrian-detection task using images displayed by two night-vision systems as input stimuli. The system equipped with a far-infrared (FIR) sensor generated less-cluttered images than the system equipped with a near-infrared (NIR) sensor. Using a reinforcement learning process, the model developed eye-movement strategies for each night-vision system. The differences in eye-movement strategies generated different eye-movement behaviors, in accord with the empirical findings.
机译:本文介绍了一种基于排队网络的计算模型,以解释驾驶员在夜视增强系统辅助下的行人检测任务中的性能。计算认知模型使用两个夜视系统显示的图像作为输入刺激来模拟行人检测任务。与配备有近红外(NIR)传感器的系统相比,配备有远红外(FIR)传感器的系统生成的图像更少混乱。该模型使用强化学习过程,为每个夜视系统开发了眼动策略。根据经验发现,眼动策略的差异产生了不同的眼动行为。

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