基于稀疏多通道面肌电信号的卷积神经网络手指运动估计

K. Asai, Norio Takase
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引用次数: 4

摘要

本文提出了一种基于卷积神经网络(CNN)稀疏多通道表面肌电信号的手指运动估计方法。虽然cnn分类在手势识别中取得了很高的准确率,但大多数情况下使用高密度的表面肌电信号作为信号采集方法,这是一个问题,因为这需要许多传感器来测量表面肌电信号,导致成本高。因此,我们提出了一种使用环形传感器的稀疏多通道表面肌电信号方法来估计手指运动。通过对表面肌电信号振幅变化产生的图像进行分类来进行手指运动估计,图像分类采用简单的CNN模型,该模型具有两对卷积池化层和两个完全连接层。实验结果表明,将表面肌电信号分为大拇指张开、大拇指闭合、手指(不含拇指)张开和手指(不含拇指)闭合四种类型,测试准确率达到90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finger Motion Estimation Based on Sparse Multi-Channel Surface Electromyography Signals Using Convolutional Neural Network
This paper presents a finger motion estimation based on sparse multi-channel surface electromyography (sEMG) signals using a convolutional neural network (CNN). Although classification with CNNs has achieved high accuracy in gesture recognition, the most cases use a high-density sEMG as the signal acquisition method, which is problematic because this requires many sensors for measuring sEMG signals, resulting in high costs. We therefore propose estimating the finger motion with a sparse multi-channel sEMG method using ring-shaped sensors. The finger motion estimation is performed by classifying images generated from the amplitude variations of sEMG signals, and the image classification is achieved with a simple CNN model featuring two pairs of convolutional and pooling layers and two fully connected layers. Experimental results showed that the test accuracy reached 90% in classifying sEMG signals into four types: thumb opened, thumb closed, fingers (excluding thumb) opened, and fingers (excluding thumb) closed.
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