Robot-aided rehabilitation methodology for enhancing movement smoothness by using a human hand trajectory generation model with task-related constraints

Yoshiyuki Tanaka
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引用次数: 6

Abstract

Natural motion produced by the biological motor control system presents movement smoothness, but neurological disorders or injuries severely deteriorates motor functions. This paper proposes a robot-aided training methodology focusing on smooth transient trajectory generation by the arm while performing a complex task (i.e., virtual curling). The aim of the proposed approach is that a trainee should be taught a reference velocity profile with high movement smoothness in the complex task via the interaction with a robotic device while improving coordination ability for natural arm movements. In the virtual curling training, a trainee manipulates the handle of an impedance-controlled robot to move a virtual stone to the center of a circular target on ice while predicting transient behaviors of the released stone. First, a reference hand motion is clarified through a set of preliminary experiments for different task conditions carried out with four well-trained subjects, and the characteristics of skilled hand velocity profiles are coded with a set of quantitative factors as task-related constraints. The skilled hand motions according to task conditions are successfully simulated in the framework of a minimum-jerk model with the task-related constraints. Next, the training program for enhancing movement smoothness is developed using the computational model, which has four training modes of operation: 1) diagnosis, 2) teaching with active-assistance by the robot, 3) training with passive-assistance, and 4) training with no assistance. Finally, training experiments with ten novice healthy volunteers demonstrate that the proposed approach can be utilized in the recovery of motor functions necessary for desired velocity profiles with high motion smoothness.
利用具有任务相关约束的人手轨迹生成模型增强运动平滑度的机器人辅助康复方法
由生物运动控制系统产生的自然运动表现为运动平滑,但神经系统疾病或损伤严重恶化运动功能。本文提出了一种机器人辅助训练方法,重点关注手臂在执行复杂任务(即虚拟卷曲)时产生的光滑瞬态轨迹。所提出的方法的目的是通过与机器人装置的相互作用,在提高手臂自然运动的协调能力的同时,在复杂的任务中,训练受训者具有高运动平滑度的参考速度剖面。在虚拟冰壶训练中,练习者操纵阻抗控制机器人的手柄将虚拟冰壶移动到冰上圆形目标的中心,同时预测释放出的冰壶的瞬态行为。首先,通过四名训练有素的被试在不同任务条件下进行的一组初步实验,明确了一种参考手部运动,并以一组定量因素作为任务相关约束对熟练手部速度曲线特征进行了编码。在具有任务相关约束的最小抽搐模型框架下,成功地模拟了不同任务条件下的熟练手部动作。接下来,利用计算模型制定了提高运动平滑度的训练方案,该训练方案有四种训练模式:1)诊断、2)机器人主动辅助教学、3)被动辅助训练、4)无辅助训练。最后,10名健康志愿者的训练实验表明,所提出的方法可以用于恢复运动功能,以获得高运动平滑度的所需速度曲线。
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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