A human-assisting manipulator teleoperated by EMG signals and arm motions

O. Fukuda, T. Tsuji, M. Kaneko, A. Otsuka
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引用次数: 505

Abstract

This paper proposes a human-assisting manipulator teleoperated by electromyographic (EMG) signals and arm motions. The proposed method can realize a new master-slave manipulator system that uses no mechanical master controller. A person whose forearm has been amputated can use this manipulator as a personal assistant for desktop work. The control system consists of a hand and wrist control part and an arm control part. The hand and wrist control part selects an active joint in the manipulator's end-effector and controls it based on EMG pattern discrimination. The arm control part measures the position of the operator's wrist joint or the amputated part using a three-dimensional position sensor, and the joint angles of the manipulator's arm, except for the end-effector part, are controlled according to this position, which, in turn, corresponds to the position of the manipulator's joint. These control parts enable the operator to control the manipulator intuitively. The distinctive feature of our system is to use a novel statistical neural network for EMG pattern discrimination. The system can adapt itself to changes of the EMG patterns according to the differences among individuals, different locations of the electrodes, and time variation caused by fatigue or sweat. Our experiments have shown that the developed system could learn and estimate the operator's intended motions with a high degree of accuracy using the EMG signals, and that the manipulator could be controlled smoothly. We also confirmed that our system could assist the amputee in performing desktop work.
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通过肌电图信号和手臂运动远程操作的人工辅助机械手
提出了一种基于肌电信号和手臂运动的人机辅助机械手。该方法可以实现一种不使用机械主控制器的新型主从机械手系统。前臂被截肢的人可以使用这个机械手作为桌面工作的个人助理。控制系统由手、手腕控制部分和手臂控制部分组成。手、手腕控制部分在机械臂末端执行器中选择一个活动关节,并基于肌电模式判别对其进行控制。手臂控制部分利用三维位置传感器测量操作者手腕关节或被截肢部位的位置,机械手手臂除末端执行器部分外的关节角度均根据该位置进行控制,进而对应机械手关节的位置。这些控制部件使操作者能够直观地控制机械手。该系统的显著特点是采用了一种新颖的统计神经网络进行肌电模式识别。该系统可以根据个体差异、电极位置的不同以及疲劳或出汗引起的时间变化来适应肌电图的变化。实验结果表明,所开发的系统可以利用肌电信号高精度地学习和估计操作者的预期动作,并且可以平稳地控制机械手。我们还证实,我们的系统可以帮助截肢者进行桌面工作。
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