CAS Key Laboratory of Human-Machine Intelligence-Synergy Systems, Shenzhen Institutes of Advanced Technology (SIAT), Chinese Academy of Science (CAS), Shenzhen, China.
Institute of Advanced Integration Technology, SIAT, Shenzhen, China.
Adv Exp Med Biol. 2019;1101:149-166. doi: 10.1007/978-981-13-2050-7_6.
As an integral part of the body, the limb poses dexterous and fine motor grasping and sensing capabilities that enable humans to effectively communicate with their environment during activities of daily living (ADL). Hence, limb loss severely limits individuals' ability especially when they need to perform tasks requiring their limb functions during ADL, thus leading to decreased quality of life. To effectively restore limb functions in amputees, the advanced prostheses that are controlled by electromyography (EMG) signal have been widely investigated and used. Since EMG signals reflect neural activity, they would contain information on the muscle activation related to limb motions. Pattern recognition-based myoelectric control is an important branch of the EMG-based prosthetic control. And the EMG-based prosthetic control theoretically supports multiple degrees of freedom movements that allows amputees to intuitively manipulate the device. This chapter focuses on EMG-based prosthetic control strategy that involves utilizing intelligent computational technique to decode upper limb movement intentions from which control commands are derived. Additionally, different techniques/methods for improving the overall performance of EMG-based prostheses control strategy were introduced and discussed in this chapter.
作为人体的一个组成部分,肢体具有灵巧和精细的运动抓握和感知能力,使人类能够在日常生活活动(ADL)中有效地与环境进行交流。因此,肢体丧失严重限制了个体的能力,尤其是当他们需要在 ADL 中执行需要肢体功能的任务时,从而导致生活质量下降。为了有效地恢复截肢者的肢体功能,已经广泛研究和使用了由肌电图(EMG)信号控制的先进假肢。由于 EMG 信号反映了神经活动,因此它们将包含与肢体运动相关的肌肉激活信息。基于模式识别的肌电控制是 EMG 假肢控制的一个重要分支。基于 EMG 的假肢控制理论上支持多个自由度的运动,使截肢者能够直观地操作设备。本章重点介绍基于 EMG 的假肢控制策略,该策略涉及利用智能计算技术从控制命令中解码上肢运动意图。此外,还介绍并讨论了不同的技术/方法来提高基于 EMG 的假肢控制策略的整体性能。