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基于机器学习的 3D 打印仿生臂肌肉控制。

Machine-Learning-Based Muscle Control of a 3D-Printed Bionic Arm.

机构信息

College of Engineering and Technology, American University of the Middle East, Al-Eqaila 54200, Kuwait.

University-Paris-Est, LiSSi, (UPEC), 94400 Vitry-sur-Seine, France.

出版信息

Sensors (Basel). 2020 Jun 2;20(11):3144. doi: 10.3390/s20113144.

Abstract

In this paper, a customizable wearable 3D-printed bionic arm is designed, fabricated, and optimized for a right arm amputee. An experimental test has been conducted for the user, where control of the artificial bionic hand is accomplished successfully using surface electromyography (sEMG) signals acquired by a multi-channel wearable armband. The 3D-printed bionic arm was designed for the low cost of 295 USD, and was lightweight at 428 g. To facilitate a generic control of the bionic arm, sEMG data were collected for a set of gestures (fist, spread fingers, wave-in, wave-out) from a wide range of participants. The collected data were processed and features related to the gestures were extracted for the purpose of training a classifier. In this study, several classifiers based on neural networks, support vector machine, and decision trees were constructed, trained, and statistically compared. The support vector machine classifier was found to exhibit an 89.93% success rate. Real-time testing of the bionic arm with the optimum classifier is demonstrated.

摘要

本文设计、制造并优化了一种可定制的、可穿戴的 3D 打印仿生手臂,适用于右上肢截肢者。对用户进行了实验测试,成功地使用多通道可穿戴臂带采集的表面肌电图(sEMG)信号来控制人工仿生手。3D 打印仿生臂的设计成本低至 295 美元,重量仅为 428 克。为了方便通用控制仿生臂,从广泛的参与者中采集了一组手势(握拳、张开手指、内 waved、外 waved)的 sEMG 数据。为了训练分类器,对采集到的数据进行了处理,并提取了与手势相关的特征。在这项研究中,构建、训练并统计比较了几种基于神经网络、支持向量机和决策树的分类器。支持向量机分类器的成功率达到了 89.93%。演示了使用最优分类器的仿生臂的实时测试。

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