虚拟现实环境和触觉策略增强机器人辅助训练中的内隐学习和动机

F. Bernardoni, Özhan Özen, Karin A. Buetler, L. Marchal-Crespo
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引用次数: 16

摘要

动机在运动学习和神经康复中起着至关重要的作用。当面对非常困难的任务时,参与者的动机可能会下降到他们可能会停止训练的程度。相反,如果任务太简单,参与者可能会表现得很好,并认为训练很无聊。在本文中,我们提出了一个虚拟现实环境与不同的机器人训练策略相结合,修改任务功能难度,以提高参与者的动机。我们采用气动驱动的机器人步进作为触觉界面。我们首先评估了扰动观测器作为加速度控制器的使用,以提供对变化的系统参数、未建模的动力学和与气动控制相关的未知扰动的高鲁棒性。在虚拟现实环境中学习的运动任务包括通过改变主腿的运动频率来操纵卧式自行车沿着期望的路径运动。运动任务是专门为内隐学习而设计的,即在没有意识到所学内容的情况下学习。为了降低练习过程中的任务功能难度,提出了一种触觉辅助策略。在对8名健康参与者的可行性研究中,我们发现机器人设备提供的触觉辅助成功地提高了训练期间的任务表现,特别是对技能较差的参与者。此外,我们发现在触觉辅助训练时,参与者的动机与表现误差之间存在负相关,这表明触觉辅助在运动训练时具有增强动机的巨大潜力。
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Virtual Reality Environments and Haptic Strategies to Enhance Implicit Learning and Motivation in Robot-Assisted Training
Motivation plays a crucial role in motor learning and neurorehabilitation. Participants’ motivation could decline to a point where they may stop training when facing a very difficult task. Conversely, participants may perform well and consider the training boring if the task is too easy. In this paper, we present a combination of a virtual reality environment with different robotic training strategies that modify task functional difficulty to enhance participants’ motivation. We employed a pneumatically driven robotic stepper as a haptic interface. We first evaluated the use of disturbance observers as acceleration controllers to provide high robustness to varying system parameters, unmodeled dynamics and unknown disturbances associated with pneumatic control. The locomotor task to be learned in the virtual reality environment consisted of steering a recumbent bike to follow a desired path by changing the movement frequency of the dominant leg. The motor task was specially designed to engage implicit learning -i.e., learning without conscious recognition of what is learned. A haptic assistance strategy was developed in order to reduce the task functional difficulty during practice. In a feasibility study with eight healthy participants, we found that the haptic assistance provided by the robotic device successfully contributed to improve task performance during training, especially for less skilled participants. Furthermore, we found a negative correlation between participants’ motivation and performance error when training with haptic assistance, suggesting that haptic assistance has a great potential to enhance motivation during motor training.
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