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Fingers Movements Control System Based on Artificial Neural Network Model

机译:基于人工神经网络模型的手指运动控制系统

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摘要

Surface electromyographic (sEMG) signal is used in the various fields of applications where the need exists to measure the activity of body muscles, such as brain-computer interfaces, game industry, medical engineering, and other practical spheres. Even more, the use of sEMG signal in the field of active prosthesis industry has become traditional for many years. However, despite the fact that the question of using it in the field of fingers prostheses is still open, in general, the sEMG signal required multichannel measuring devices or massive, voluminous equipment for precise recognition of hands or fingers movement. That is decreasing the possible portability and convenience of prostheses and as a consequence is increasing their final price. In this paper we propose a method of organizing the controlling and measuring unit of the prosthetic device based on artificial neural network (ANN) model and one-channel microcontroller based sEMG measuring system. The proposed ANN model works with only 4 input time-domain features of sEMG signal and provides an accuracy of 95.52% for classification of 6 different types of finger movements that makes it a good solution for next implementation in the system of prosthetic fingers or wrist devices.
机译:表面肌电(sEMG)信号用于需要测量身体肌肉活动的各种应用领域,例如脑机接口,游戏产业,医学工程和其他实用领域。甚至,在有源假体行业中使用sEMG信号已经成为许多年的传统。但是,尽管在手指假体领域中使用它的问题仍然存在,但通常来说,sEMG信号需要多通道测量设备或庞大的大型设备才能精确识别手或手指的运动。这降低了假体的可能的便携性和便利性,并且因此增加了其最终价格。本文提出了一种基于人工神经网络(ANN)模型和基于单通道微控制器的sEMG测量系统来组织假体设备的控制和测量单元的方法。拟议的ANN模型仅适用于sEMG信号的4个输入时域特征,并且对6种不同类型的手指运动进行分类可提供95.52%的准确度,这使其成为下一步在义肢或手腕装置系统中的解决方案。

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