Wang Ziyi, Huang Wenjing, Qi Zikang, Yin Shuolei
School of Materials Science and Engineering, Central South University of Forestry and Technology, Changsha 410004, China.
School of Mechanical and Intelligent Manufacturing, Central South University of Forestry and Technology, Changsha 410004, China.
Biomimetics (Basel). 2024 Dec 23;9(12):784. doi: 10.3390/biomimetics9120784.
Surface electromyography (sEMG) signals reflect the local electrical activity of muscle fibers and the synergistic action of the overall muscle group, making them useful for gesture control of myoelectric manipulators. In recent years, deep learning methods have increasingly been applied to sEMG gesture recognition due to their powerful automatic feature extraction capabilities. sEMG signals contain rich local details and global patterns, but single-scale convolutional networks are limited in their ability to capture both comprehensively, which restricts model performance. This paper proposes a deep learning model based on multi-scale feature fusion-MS-CLSTM (MS Block-ResCBAM-Bi-LSTM). The MS Block extracts local details, global patterns, and inter-channel correlations in sEMG signals using convolutional kernels of different scales. The ResCBAM, which integrates CBAM and Simple-ResNet, enhances attention to key gesture information while alleviating overfitting issues common in small-sample datasets. Experimental results demonstrate that the MS-CLSTM model achieves recognition accuracies of 86.66% and 83.27% on the Ninapro DB2 and DB4 datasets, respectively, and the accuracy can reach 89% in real-time myoelectric manipulator gesture prediction experiments. The proposed model exhibits superior performance in sEMG gesture recognition tasks, offering an effective solution for applications in prosthetic hand control, robotic control, and other human-computer interaction fields.
表面肌电图(sEMG)信号反映了肌肉纤维的局部电活动以及整个肌肉群的协同作用,使其在肌电操纵器的手势控制中很有用。近年来,深度学习方法因其强大的自动特征提取能力而越来越多地应用于sEMG手势识别。sEMG信号包含丰富的局部细节和全局模式,但单尺度卷积网络在全面捕捉这两者的能力上有限,这限制了模型性能。本文提出了一种基于多尺度特征融合的深度学习模型——MS-CLSTM(MS模块-ResCBAM-双向长短期记忆网络)。MS模块使用不同尺度的卷积核提取sEMG信号中的局部细节、全局模式和通道间相关性。集成了CBAM和简单残差网络的ResCBAM在减轻小样本数据集中常见的过拟合问题的同时,增强了对关键手势信息的关注。实验结果表明,MS-CLSTM模型在Ninapro DB2和DB4数据集上的识别准确率分别达到86.66%和83.27%,并且在实时肌电操纵器手势预测实验中的准确率可达89%。所提出的模型在sEMG手势识别任务中表现出卓越的性能,为假肢手控制、机器人控制及其他人机交互领域的应用提供了有效的解决方案。