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Stochastic similarity for validating human control strategy models

机译:用于验证人类控制策略模型的随机相似性

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Modeling dynamic human control strategy (HCS), or human skill through learning is becoming an increasingly popular paradigm in many different research areas, such as intelligent vehicle systems, virtual reality, and space robotics. Validating the fidelity of such models requires that we compare the dynamic trajectories generated by the HCS model in the control feedback loop to the original human control data. To this end we have developed a stochastic similarity measure-based on hidden Markov model (HMM) analysis-capable of comparing dynamic, multi-dimensional trajectories. In this paper, we first derive and demonstrate properties of the proposed similarity measure for stochastic systems. We then apply the similarity measure to real-time human driving data by comparing different control strategies for different individuals. Finally, we show that the similarity measure outperforms the more traditional Bayes classifier in correctly grouping driving data from the same individual.
机译:对动态人类控制策略(HCS)或通过学习进行的人类技能建模,正在成为许多不同研究领域中越来越流行的范例,例如智能车辆系统,虚拟现实和太空机器人。验证此类模型的保真度要求我们将由HCS模型在控制反馈回路中生成的动态轨迹与原始人为控制数据进行比较。为此,我们开发了一种基于隐马尔可夫模型(HMM)分析的随机相似性度量,能够比较动态的多维轨迹。在本文中,我们首先导出并证明了所提出的随机系统相似性度量的性质。然后,我们通过比较针对不同个人的不同控制策略,将相似性度量应用于实时人类驾驶数据。最后,我们显示,在对来自同一个人的驾驶数据进行正确分组时,相似性度量优于传统的贝叶斯分类器。

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