Application Research on Optimization Algorithm of sEMG Gesture Recognition Based on Light CNN+LSTM Model

IF 10.5 Q1 ENGINEERING, BIOMEDICAL Cyborg and bionic systems (Washington, D.C.) Pub Date : 2021-11-08 DOI:10.34133/2021/9794610
Dianchun Bai, Tie Liu, Xinghua Han, Hongyu Yi
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引用次数: 20

Abstract

The deep learning gesture recognition based on surface electromyography plays an increasingly important role in human-computer interaction. In order to ensure the high accuracy of deep learning in multistate muscle action recognition and ensure that the training model can be applied in the embedded chip with small storage space, this paper presents a feature model construction and optimization method based on multichannel sEMG amplification unit. The feature model is established by using multidimensional sequential sEMG images by combining convolutional neural network and long-term memory network to solve the problem of multistate sEMG signal recognition. The experimental results show that under the same network structure, the sEMG signal with fast Fourier transform and root mean square as feature data processing has a good recognition rate, and the recognition accuracy of complex gestures is 91.40%, with the size of 1 MB. The model can still control the artificial hand accurately when the model is small and the precision is high.
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基于Light CNN+LSTM模型的表面肌电信号手势识别优化算法应用研究
基于表面肌电的深度学习手势识别在人机交互中发挥着越来越重要的作用。为了保证深度学习在多状态肌肉动作识别中的高精度,并确保训练模型能够应用于存储空间较小的嵌入式芯片中,本文提出了一种基于多通道表面肌电放大单元的特征模型构建和优化方法。将卷积神经网络和长期记忆网络相结合,利用多维序列sEMG图像建立特征模型,以解决多状态sEMG信号识别问题。实验结果表明,在相同的网络结构下,采用快速傅立叶变换和均方根作为特征数据处理的sEMG信号具有良好的识别率,复杂手势的识别准确率为91.40%,大小为1 MB。当模型较小且精度较高时,该模型仍然可以精确地控制假手。
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CiteScore
7.70
自引率
0.00%
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0
审稿时长
21 weeks
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