Gesture Recognition Through sEMG with Wearable Device Based on Deep Learning

被引:0
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作者
Shu Shen
Kang Gu
Xin-Rong Chen
Cai-Xia Lv
Ru-Chuan Wang
机构
[1] Nanjing University of Posts and Telecommunications,School of Computer Science
[2] Jiangsu High Technology Research Key Laboratory for Wireless Sensor Netwroks,Academy for Engineering and Technology
[3] Fudan University,undefined
[4] Shanghai Key Laboratory of Medical Image Computing and Computer Assisted Intervention,undefined
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关键词
Surface electromyography; Gesture recognition; Convolutional neural network; Wearable device;
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学科分类号
摘要
It is conducive to the application of sEMG signals in helping disabled people through combining wearable devices with deep learning. Therefore, design of sEMG gesture recognition system using deep learning based on wearable device is proposed in this paper. The system is mainly consisted of wearable sEMG acquisition device and sEMG gesture recognition method based on deep learning. In the wearable sEMG acquisition device, the sEMG signal sensor is mainly used to convert the human bioelectrical signal into an analog electrical signal. Then it can be acquired using an analog to digital converter. We also use 2.4 GHz wireless communication for data transmission, and use the micro-controller as the core of system control and data processing. In the sEMG gesture recognition method, we designed a model of sEMG signal gesture classification based on convolutional neural network (CNN). It can avoid omission of important feature information and improve accuracy of recognition, effectively. In the experimental part, we collected the sEMG signals of three different gestures using our own wearable sEMG acquisition device. Then, we trained and evaluated on the designed sEMG gesture recognition model using these data. A recognition accuracy of about 79.43% can be achieved in three gestures. Finally, we trained and tested the sEMG gesture recognition model on the Ninapro DB5 dataset and can reach about 74.51% accuracy on 52 gestures. In the case that there are more types of gestures recognized, our accuracy is still 5.02%, 6.61%, and 2.58% higher than Linear Discriminant Analysis (LDA), Support Vector Machine (SVM), and Long Short Term Memory-CNN (LCNN), respectively. Also, the accuracy rate is 5.47% higher than SVM and Random Forests.
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页码:2447 / 2458
页数:11
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