Two performance measures for evaluating human control strategy

Jingyan Song, Yangsheng Xu, M. Nechyba, Y. Yam
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引用次数: 8

Abstract

In the last few years, modeling dynamic human control strategy (HCS) is becoming an increasingly popular paradigm in a number of different research areas, such as the intelligent vehicle highway system, virtual reality and robotics. Usually, these models are derived empirically, rather than analytically, from real human input-output control data. As such, there is a great need to develop adequate performance criteria for these models, as few guarantees exist about their theoretical performance. It is our goal in this paper to develop several such criteria. In this paper, we first collect driving data from different individuals through a real-time graphic driving simulator. We then model each individual's control strategy through the flexible cascade neural network learning architecture. Next, we develop two performance measures for evaluating the resulting HCS models, one dealing with obstacle avoidance, the other with tight-turning behavior. Finally, we evaluate the relative skill of different HCS models through the proposed performance criteria.
评价人类控制策略的两个性能指标
近年来,人类动态控制策略(HCS)建模在智能车辆公路系统、虚拟现实和机器人技术等多个研究领域日益成为一种流行的研究范式。通常,这些模型是根据经验推导出来的,而不是从真实的人类输入输出控制数据中分析出来的。因此,有必要为这些模型制定适当的性能标准,因为它们的理论性能几乎没有保证。在本文中,我们的目标是开发几个这样的标准。在本文中,我们首先通过实时图形驾驶模拟器收集不同个体的驾驶数据。然后,我们通过灵活的级联神经网络学习架构对每个个体的控制策略进行建模。接下来,我们开发了两个性能指标来评估所得的HCS模型,一个处理避障,另一个处理急转弯行为。最后,我们通过提出的性能标准来评估不同HCS模型的相对技能。
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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