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A compact and cost-effective pattern recognition based myoelectric control system for robotic prosthetic hands

机译:一种紧凑且经济高效的基于模式识别的机器人假手肌电控制系统

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In this study, we propose, implement and test a compact pattern recognition (PR) based myoelectric control system to operate robotic prosthetic hands. Instead of using a bulky sensor configuration (8 or more sensors on the forearm) as most commercial or academic PR systems use, only two sEMG-IMU sensors are deployed on the forearm, consistent with the existing myoelectric hands’ electrode configuration, to bring the ease of implementation and consequently improve its practical application. For maintaining the recognition performance as much as possible, two additional sEMG-IMU sensors are attached to the upper arm, which aims to collect more information of muscular activities for the benefits of classification but not affecting the existing forearm sockets of the prosthetic hand users. The offline analysis by using the data from 10 intact subjects and 10 transradial (i.e. below-elbow) amputees shows the comparable recognition performance using the proposed sensor configuration (2 + 2 sensors) and classification technique (Random Forest classifier) to that using the full pack of sensing system (10 sensors on the forearm + 2 sensors on the upper arm). In the online tests, the proposed PR system was employed to control the UoW/ACES soft robotic prosthetic hand to successfully and reliably perform seven common wrist/thumb movements for the activities of daily life (ADL).
机译:在这项研究中,我们提出,实施和测试基于紧凑型模式识别(PR)的肌电控制系统,以操作机器人假肢手。代替大多数商业或学术PR系统使用的笨重的传感器配置(前臂上有8个或更多传感器),前臂上仅部署了两个sEMG-IMU传感器,与现有的肌电手的电极配置相一致,从而带来了易于实施,因此改善了其实际应用。为了尽可能保持识别性能,两个附加的sEMG-IMU传感器连接到上臂,目的是收集更多的肌肉活动信息,以利于分类,但又不影响手部假肢的现有前臂槽。通过使用来自10个完整受试者和10个经radi骨(即肘部以下)截肢者的数据进行的离线分析显示,与建议的传感器配置(2 + 2个传感器)和分类技术(Random Forest分类器)相比,使用拟议的传感器配置(完全森林分类器)的识别性能相当一整套传感系统(前臂上有10个传感器,上臂上有2个传感器)。在在线测试中,建议的PR系统用于控制UoW / ACES软机器人假肢手,以成功,可靠地执行7种常见的腕部/拇指运动,以进行日常生活(ADL)。

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