人体腿部表面肌电信号特征提取方法
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TN911.6

基金项目:

特殊环境机器人技术四川省重点实验室开放基金项目(15kftk03);西南科技大学校级创新基金资助项目(CX16-076);西南科技大学校内基金项目(14zx1107,14zx7124)。


Feature extraction method of sEMG of human legs
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    摘要:

    表面肌电信号(sEMG,surface electromyography)作为人体运动检测的主要信息源之一,已被广泛应用于康复训练福祉机器人领域。针对人体下肢动作识别的问题,提出了一种针对表面肌电信号进行小波变换的特征提取方法。在肌电信号的频域分布中,该方法选取小波子空间中活动段的平均功率组成特征向量。为验证所提出方法的有效性,设计实现了一种微型便携式多通道sEMG信号采集系统,并利用支持向量机(SVM,support vector machine)构建分类器对腿部动作进行识别。实验结果表明:该方法能有效识别腿部常见的4种动作,同一个体动作识别率能达到95%以上,不同个体识别率平均能达到85%,能够较好地应用于下肢运动障碍患者的日常康复训练。

    Abstract:

    Surface electromyography(sEMG) is one of the main information sources of human motion detection and has been widely used in the field of well-being of robots. We present a feature extraction method based on wavelet transform power for identifying the movement of human legs. The average power of the active segment in wavelet subspace is used to make up the feature vector according to the frequency domain distribution of the sEMG signal. In order to verify the effectiveness of the proposed method, we design and implement a small portable multi-channel sEMG signal acquisition system, and construct a classifier with support vector machine (SVM) to identify the leg movements. The results of the study show that the method can distinguish four kinds of common actions of the leg, the recognition rate of the same individual can reach more than 95%, and the recognition rate of different individuals can reach 85%, which can be applied to daily rehabilitation training of patients with lower limb movement disorders.

    参考文献
    [1] 胡进,侯增广,陈翼雄,等.下肢康复机器人及其交互控制方法.自动化学报,2014,(11):2378-2383. HU Jin, HOU Zengguang, CHEN Yixiong, et al. Lower Limb Rehabilitation Robots and Interactive Control Methods. Acta Auomatica Sinica, 2014, (11):2378-2383. (in Chinese).
    [2] 吴常铖,宋爱国,李会军,等.一种上肢康复训练机器人及控制方法[J].仪器仪表学报,2014,35(5):999-1004. WU Changcheng, SONG Aiguo, LI Huijun, et al. Upper limb rehabilitation training robot and its control method[J]. Chinese Journal of Scientific Instrument, 2014, 35(5):999-1004. (in Chinese).
    [3] Luh G C, Ma Y H, Yen C J. Muscle-gesture robot hand control based on sEMG signals with wavelet transform features and neural network classifier[J]. Machine Learning and Cybernetics, 2016, (7):10-13.
    [4] Sakshi S, Hemu F, Nidhi C. Feature Extraction and Classification of Surface EMG Signals for Robotic Hand Simulation[J]. Communications on Applied Electronics, 2016, (2):27-31.
    [5] Khokhar Z O, Xiao Z G, Menon C. Surface EMG pattern recognition for real-time control of a wrist exoskeleton[J]. BioMedical Engineering OnLine, 2010, 9(1):1-17.
    [6] De Luca C J, Gilmore L D, Kuznetsov M, et al. Filtering the surface EMG signal:movement artifact and baseline noise contamination[J]. Journal of Biomechanics, 2010, 43(8):1573-1579.
    [7] Cengiz T, Ilyas E, Nurettin S. Feature extraction of wavelet transform for sEMG pattern classification[J]. Signal Processing and Communications Applications Conference, 2014, (4):23-25.
    [8] Jordan R, Jessica S, Jaydip D. Real-time individual finger movement of a mecha TE robotic hand using human forearm sEMG signals through hardware-software communication[J]. Scholars Journal of Engineering and Technology, 2015, (3):251-257.
    [9] 秦毅,王腾,何启源,等.高密度小波变换在滚动轴承复合故障诊断中的应用[J].重庆大学学报,2013,(3):13-19. QIN Yi, WANG Teng, HE Qiyuan, et, al. Application of higher density wavelet transform to composite fault diagnosis of rolling bearing[J]. Journal of Chongqing University, 2013, (3):13-19. (in Chinese).
    [10] 佟丽娜,侯增广,彭亮,等.基于多路sEMG时序分析的人体运动模式识别方法[J].自动化学报,2014,(5):810-821. TONG Lina, HOU Zengguang, PENG Liang, et al. Multi-channel sEMG time series analysis based human motion recognition method[J]. Acta Auomatica Sinica, 2014, (5):810-821. (in Chinese).
    [11] 熊安斌,丁其川,赵新刚,等.基于单通道sEMG分解的手部动作识别方法[J].机械工程学报,2016,52(7):6-13. XIONG Anbin, DING Qichuan, ZHAO Xingang, et al. Classification of hand gestures based on single-channel semg decomposition[J].Journal of Mechanical Engineering, 2016, 52(7):6-13. (in Chinese).
    [12] 陈江城,张小栋,尹贵.基于表面肌电信号的人体步态事件快速识别方法[J].中国机械工程,2016,27(7):911-924. CHEN Jiangcheng, ZHANG Xiaodong, YIN Gui. Human gait events fast recognition method vis surface electromyography[J]. China Mechanical Engineering, 2016, 27(7):911-924. (in Chinese).
    [13] Linhares N D, Andrade A O. Parametric sEMG muscle activity detection based on MAV and sample entropy[C]//Biosignals and Biorobotics Conference.[S.l.]:IEEE, 2014:1-6.
    [14] 王见,陈义,邓帅.基于改进SVM分类器的动作识别方法[J].重庆大学学报,2016,39(2):12-17. WANG Jian, CHEN Yi, DENG Shuai. A gesture-recognition algorithm based on improved SVM[J]. Journal of Chongqing University,2016, 39(2):12-17. (in Chinese).
    [15] Pomboza-junez G, Terriza J H. Hand Gesture Recognition based on sEMG signals using Support Vector Machine[M]. New York, NY, USA:IEEE, 2016.
    [16] Babita, Preeti K, Yogendra N, et al. Binary movement classification of sEMG signal using linear SVM and Wavelet Packet Transform[C]//2016 IEEE 1st International Conference on Power Electronics, Intelligent Control and Energy Systems. IEEE, 2016, (7):4-6.
    [17] 洋洋,陈小惠,王保强,等.脉搏信号中有效信号识别与特征提取方法研究[J].电子测量与仪器学报,2016, 30(1):126-132. YANG Yang, CHEN Xiaohui, WANG Baoqiang, et al. Effective signal recognition and feature extraction of pulse signal[J]. Journal of Electronic Measurement and Instrument, 2016, 30(1):126-132. (in Chinese).
    [18] 卢宁艳,王健,杨红春.电极放置位置对表面肌电信号特征的影响[J].中国运动医学杂志,2008,27(2):174-178. LU Ningyan, WANG Jian, YANG Hongchun. The Influences of Electrode Location on the sEMG Signal from the Exercise-Induced Fatigued Muscle[J].Chinese Journal of Sports Medicine, 2008, 27(2):174-178. (in Chinese)
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王坤朋,庞杰,石磊,屈剑锋.人体腿部表面肌电信号特征提取方法[J].重庆大学学报,2017,40(11):83-90.

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  • 收稿日期:2017-07-11
  • 在线发布日期: 2017-11-14
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