School of Mechanical and Aerospace Engineering, Nanyang Technological University, Singapore, Singapore.
Faculty of Mathematics and Statistics, University of St. Gallen, St. Gallen, Switzerland.
PLoS One. 2024 Feb 28;19(2):e0294046. doi: 10.1371/journal.pone.0294046. eCollection 2024.
The empirical laws governing human-curvilinear movements have been studied using various relationships, including minimum jerk, the 2/3 power law, and the piecewise power law. These laws quantify the speed-curvature relationships of human movements during curve tracing using critical speed and curvature as regressors. In this work, we provide a reservoir computing-based framework that can learn and reproduce human-like movements. Specifically, the geometric invariance of the observations, i.e., lateral distance from the closest point on the curve, instantaneous velocity, and curvature, when viewed from the moving frame of reference, are exploited to train the reservoir system. The artificially produced movements are evaluated using the power law to assess whether they are indistinguishable from their human counterparts. The generalisation capabilities of the trained reservoir to curves that have not been used during training are also shown.
已经使用各种关系研究了人类曲线运动的经验法则,包括最小冲击、2/3 幂律和分段幂律。这些定律通过将临界速度和曲率作为回归量,量化了人类在曲线追踪过程中的速度-曲率关系。在这项工作中,我们提供了一个基于储层计算的框架,可以学习和再现类似人类的运动。具体来说,利用观察结果的几何不变性,即从曲线最近点观察到的横向距离、瞬时速度和曲率,从移动参考系观察,来训练储层系统。利用幂律来评估人工产生的运动,以评估它们是否与人类运动无法区分。还展示了经过训练的储层对训练过程中未使用的曲线的泛化能力。