Convolutional neural network proposal for wrist position classification from electromyography signals

A. Orjuela-Cañón, O. J. Perdomo-Charry, C. H. Valencia-Niño, Leonardo Forero
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引用次数: 0

Abstract

Commonly, electromyography (EMG) signals have been employed for movements or pattern classification. For this, different digital signals processing methods are applied to extract features, before a classification stage. The present work deals with a proposal based on the use of image classification employing deep learning techniques. The images were obtained from a spectrogram analysis as a previous process of the convolutional neural network employment. Then, a classification of five positions from wrist movements is carried out the model. Results showed that the accuracy is comparable to similar techniques employed with a shallow neural network and a deep neural network applied to the same dataset.
基于肌电信号的腕部位置分类的卷积神经网络方案
通常,肌电图(EMG)信号已被用于运动或模式分类。为此,在分类阶段之前,采用不同的数字信号处理方法提取特征。目前的工作涉及基于使用深度学习技术的图像分类的建议。作为卷积神经网络使用的前一个过程,图像是从频谱分析中获得的。然后,对该模型进行腕部运动的五种体位分类。结果表明,在相同的数据集上使用浅神经网络和深度神经网络所采用的类似技术的准确性相当。
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