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肌电图模式分类用于控制手部矫形器,以辅助中风后进行功能性抓握。

EMG pattern classification to control a hand orthosis for functional grasp assistance after stroke.

作者信息

Meeker Cassie, Park Sangwoo, Bishop Lauri, Stein Joel, Ciocarlie Matei

出版信息

IEEE Int Conf Rehabil Robot. 2017 Jul;2017:1203-1210. doi: 10.1109/ICORR.2017.8009413.

Abstract

Wearable orthoses can function both as assistive devices, which allow the user to live independently, and as rehabilitation devices, which allow the user to regain use of an impaired limb. To be fully wearable, such devices must have intuitive controls, and to improve quality of life, the device should enable the user to perform Activities of Daily Living. In this context, we explore the feasibility of using electromyography (EMG) signals to control a wearable exotendon device to enable pick and place tasks. We use an easy to don, commodity forearm EMG band with 8 sensors to create an EMG pattern classification control for an exotendon device. With this control, we are able to detect a user's intent to open, and can thus enable extension and pick and place tasks. In experiments with stroke survivors, we explore the accuracy of this control in both non-functional and functional tasks. Our results support the feasibility of developing wearable devices with intuitive controls which provide a functional context for rehabilitation.

摘要

可穿戴矫形器既可以作为辅助设备,帮助用户独立生活,也可以作为康复设备,帮助用户恢复受损肢体的功能。为了完全可穿戴,此类设备必须具备直观的控制方式,并且为了提高生活质量,该设备应能让用户进行日常生活活动。在此背景下,我们探讨了利用肌电图(EMG)信号来控制可穿戴外肌腱装置以实现抓取和放置任务的可行性。我们使用一款易于穿戴的、带有8个传感器的商用前臂肌电带,为外肌腱装置创建肌电模式分类控制。通过这种控制,我们能够检测到用户打开的意图,从而实现伸展以及抓取和放置任务。在对中风幸存者进行的实验中,我们探究了这种控制在非功能性任务和功能性任务中的准确性。我们的结果支持了开发具有直观控制方式的可穿戴设备的可行性,这些设备可为康复提供功能背景。

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