Coevolution of Myoelectric Hand Control under the Tactile Interaction among Fingers and Objects.

IF 18.1 Q1 ENGINEERING, BIOMEDICAL
Cyborg and bionic systems (Washington, D.C.) Pub Date : 2022-11-16 eCollection Date: 2022-01-01 DOI:10.34133/2022/9861875
Yuki Kuroda, Yusuke Yamanoi, Shunta Togo, Yinlai Jiang, Hiroshi Yokoi
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引用次数: 3

Abstract

The usability of a prosthetic hand differs significantly from that of a real hand. Moreover, the complexity of manipulation increases as the number of degrees of freedom to be controlled increases, making manipulation with biological signals extremely difficult. To overcome this problem, users need to select a grasping posture that is adaptive to the object and a stable grasping method that prevents the object from falling. In previous studies, these have been left to the operating skills of the user, which is extremely difficult to achieve. In this study, we demonstrate how stable and adaptive grasping can be achieved according to the object regardless of the user's operation technique. The required grasping technique is achieved by determining the correlation between the motor output and each sensor through the interaction between the prosthetic hand and the surrounding stimuli, such as myoelectricity, sense of touch, and grasping objects. The agents of the 16-DOF robot hand were trained with the myoelectric signals of six participants, including one child with a congenital forearm deficiency. Consequently, each agent could open and close the hand in response to the myoelectric stimuli and could accomplish the object pickup task. For the tasks, the agents successfully identified grasping patterns suitable for practical and stable positioning of the objects. In addition, the agents were able to pick up the object in a similar posture regardless of the participant, suggesting that the hand was optimized by evolutionary computation to a posture that prevents the object from being dropped.

Abstract Image

Abstract Image

Abstract Image

手指与物体触觉交互下手肌电控制的协同进化。
假手的可用性与真手有很大的不同。此外,操作的复杂性随着要控制的自由度的增加而增加,使得对生物信号的操作变得极其困难。为了克服这个问题,用户需要选择一种与物体相适应的抓取姿势和一种稳定的抓取方法,以防止物体掉落。在以前的研究中,这些都是留给用户的操作技能,这是非常难以实现的。在本研究中,我们展示了如何根据对象实现稳定和自适应抓取,而不管用户的操作技术如何。所需的抓取技术是通过假手与周围刺激(如肌电、触觉和抓取物体)之间的相互作用,确定电机输出与每个传感器之间的相关性来实现的。使用六名参与者的肌电信号训练16自由度机械手,其中包括一名患有先天性前臂缺陷的儿童。结果表明,在肌电刺激下,每个代理都能张开和闭合手,完成取物任务。对于这些任务,智能体成功地识别出适合于物体实际和稳定定位的抓取模式。此外,不管参与者是谁,智能体都能以相似的姿势捡起物体,这表明手是通过进化计算优化到防止物体掉落的姿势的。
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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来源期刊
CiteScore
7.70
自引率
0.00%
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0
审稿时长
21 weeks
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