基于神经网络的假指肌电模式识别

A. Hiraiwa, N. Uchida, K. Shimohara
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引用次数: 21

摘要

通过控制界面,用户可以“像我们想象的那样”与计算机通信,这是人机交互的梦想。针对机器适应用户意图的界面,而不是用户适应机器的界面,我们一直在应用神经网络来实现肌电控制的假肢,这是控制论的历史遗产。本文提出用神经网络对肌电模式进行分析和分类。实验和仿真结果表明,基于肌电图的方法不仅可以识别手指的运动和扭矩,还可以识别手指动态运动中的关节角度。
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EMG pattern recognition by neural networks for prosthetic fingers control

The cybernetic interface through which users can communicate with computers “as we may think” is the dream of human-computer interactions. Aiming at interfaces where machines adapt themselves to users' intention instead of users' adaptation to machines, we have been applying neural networks to realize electromyographic(EMG)-controlled prosthetic members—a historical heritage of the cybernetics. This paper proposes that EMG patterns can be analyzed and classified by neural networks. Through experiments and simulations, it is demonstrated that recognition of not only finger movement and torque but also joint angles in dynamic finger movement, based on EMG patterns, can be successfully accomplished.

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