The Study of Lower Limb Motion Recognition Method Based on GA-RBF Neural Network andsEMG Signals
Zhang Peng1, Zhang Junxia1*, Liu Ruiheng1, Ahmed Mohamed Moneeb Elsabbagh2
1(School of Mechanical Engineering, Tianjin University of Science and Technology, Tianjin 300222, China) 2(Faculty of Engineering, Ain Shams University, Cairo 11566, Egypt)
Abstract:To improve the accuracy of human surface electromyography (sEMG) signals for the recognition of lower limb movements, an RBF neural network classification model based on genetic algorithm (GA) optimization was proposed in this work. The sEMG of eight kinds of daily lower limb movements was collected, and the ‘sym6' wavelet function was selected for filtering preprocessing of sEMG. The principal component analysis (PCA) was used to reduce the dimension of time-frequency domain features, and the feature vectors were input into the RBF neural network optimized by GA for training and recognition. Experimental results showed that the average recognition rate of this method for the eight lower limb movements of the same subject was 94.00%±0.45 %, and the recognition rate for the lower limb movements of 15 different subjects reached 89.3 %, which was 11.8 % higher and 6 s shorter than that of the traditional BP neural network. The proposed method displayed a high recognition accuracy in the application of using sEMG signals to recognize human lower limb movements, providing a reference for the study of intention recognition of lower limb intelligent rehabilitation robot and of assistance in the rehabilitation of patients with lower limb disabilities.
张鹏, 张峻霞, 刘瑞恒, Ahmed Mohamed Moneeb Elsabbagh. 基于GA-RBF神经网络和sEMG的下肢动作识别方法研究[J]. 中国生物医学工程学报, 2022, 41(1): 41-47.
Zhang Peng, Zhang Junxia, Liu Ruiheng, Ahmed Mohamed Moneeb Elsabbagh. The Study of Lower Limb Motion Recognition Method Based on GA-RBF Neural Network andsEMG Signals. Chinese Journal of Biomedical Engineering, 2022, 41(1): 41-47.
[1] 鲁燕燕,谢红珍. 可穿戴设备在医疗领域的应用[J]. 中国医疗器械杂志,2017,41(3): 213-215,230. [2] Sun YP, Chen SC, Liang YC, et al. Design of a bionic-inspired exoskeleton robot for lower limb assist [J]. Journal of Vibroengineering, 2016, 18(8):5452-5461. [3] Benalcazar ME, Motoche C, Zea JA, et al. Real-time hand gesture recognition using the Myo armband and muscle activity detection[C]// 2017 IEEE Second Ecuador Technical Chapters Meeting (ETCM). Salinas: IEEE, 2017:17488650. [4] Ma J, Krishnamurthy A, Ahalt SC. SVM training with duplicated samples and its application in SVM-based ensemble methods [J]. Neurocomputing, 2004, 61(1):455-459. [5] Zhang Zhen, Yang Kuo, Qian Jinwu. Real-time surface EMG pattern recognition for hand gestures based on an artificial neural network [J]. Sensors, 2019, 19(14):3170. [6] 雷华勤. 利用神经网络进行人手动作表面肌电信号的识别研究[J].武汉工程职业技术学院报, 2019, 31 (4) : 13-17. [7] Chen H, Zhang Y, Li G, et al. Surface electromyography feature extraction via convolutional neural network [J]. International Journal of Machine Learning and Cybernetics, 2020 (11): 185-196. [8] Wen Tingxi, Zhang Zhongnan, Qiu Ming, et al. A two-dimensional matrix image based feature extraction method for classification of sEMG: a comparative analysis based on SVM, KNN and RBF-NN [J]. Journal of X-Ray Science and Technology, 2017, 25(2):287-300. [9] 张妮. 基于表面肌电信号时域特征分析的下肢康复评估研究[D]. 西安:长安大学,2019 . [10] 任丽晔,邵宗明,徐冬蕾. 人体表面肌电信号的时频域特征提取研究[J]. 长春大学学报,2019,29(10):10-12. [11] 杨新亮,罗志增. 基于表面肌电信号的时频组合特征融合识别[J]. 华中科技大学学报(自然科学版),2011, 39(S2):153-156. [12] 洪洁,王璐,舒军勇,等. 基于EMD小波阈值的表面肌电信号去噪研究 [J]. 重庆理工大学学报(自然科学版),2015, 29(8):23-27. [13] 都明宇,王志恒,荀一,等.基于多通道sEMG小波包分解特征的人手动作模式识别方法[J].计算机测量与控制,2018, 237 (6) : 168-171. [14] Veer K, Vig R. Identification and classification of upper limb motions using PCA [J]. Biomedical Engineering-Biomedizinische Technik, 2017(2):191-196. [15] Xiaolong Zhai, Jelfs B, Chan RH, et al. Short latency hand movement classification based on surface EMG spectrogram with PCA[C]// 2016 38th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC), Orlando, IEEE, 2016: 327-330. [16] Yu M, Li G, Jiang D, et al. Application of PSO-RBF neural network in gesture recognition of continuous surface EMG signals [J]. Journal of Intelligent and Fuzzy Systems, 2019(20):1-12. [17] Duvvuri SP, Anmala J. Fecal coliform predictive model using genetic algorithm-based radial basis function neural networks [J]. Neural Computing & Applications, 2019, 31:8393-8407. [18] 于擎,杨基海,陈香,等. 基于BP神经网络的手势动作表面肌电信号的模式识别[J]. 生物医学工程研究,2009,28(1):6-10. [19] 耿丽清,袁国顺. 基于遗传算法优化神经网络的表面肌电信号识别[J]. 工业控制计算机,2013,26(2): 96-97. [20] Qingju Z, Kai S. A Study on multi-motion pattern recognition of EMG based on genetic algorithm[C]// The 2nd International Conference on Instrumentation. Harbin: IEEE, 2013:13289691. [21] Lovrenovic Z, Doumit M. Development and testing of a passive walking assist exoskeleton [J]. Biocybernetics and Biomedical Engineering. 2019, 39: 992-1004. [22] Bai D,Chen S,Yang J,et al.Intelligent prosthetic arm force control based on sEMG analysis and BPNN classifier[C]// 2017 IEEE International Conference on Cyborg and Bionic Systems (CBS).Beijing: IEEE,2017:17491136. [23] Chen BJ, Zheng EH, Wang QN, et al. A new strategy for parameter optimization to improve phase-dependent locomotion mode recognition [J]. Neurocomputing, 2015, 149: 585-593. [24] Liu Z, Lin W, Geng Y. Intent pattern recognition of lower-limb motion based on mechanical sensors [J]. IEEE/CAA Journal of Automatica Sinica, 2017, 4(4): 651-660.