Conditioning and Sampling Issues of EMG Signals in Motion Recognition of Multifunctional Myoelectric Prostheses

被引:0
|
作者
Guanglin Li
Yaonan Li
Long Yu
Yanjuan Geng
机构
[1] Key Lab for Health Informatics of Chinese Academy of Science (CAS),Institute of Biomedical and Health Engineering
[2] Shenzhen Institutes of Advanced Technology,Department of Biology
[3] CAS,undefined
[4] Purdue University,undefined
来源
关键词
Electromyography; Multifunctional myoelectric prosthesis; Signal conditioning and sampling; Limb amputation; Pattern recognition;
D O I
暂无
中图分类号
学科分类号
摘要
Historically, the investigations of electromyography (EMG) pattern recognition-based classification of intentional movements for control of multifunctional prostheses have adopted the filter cut-off frequency and sampling rate that are commonly used in EMG research fields. In practical implementation of a multifunctional prosthesis control, it is desired to have a higher high-pass cut-off frequency to reduce more motion artifacts and to use a lower sampling rate to save the data processing time and memory of the prosthesis controller. However, it remains unclear whether a high high-pass cut-off frequency and a low-sampling rate still preserve sufficient neural control information for accurate classification of movements. In this study, we investigated the effects of high-pass cut-off frequency and sampling rate on accuracy in identifying 11 classes of arm and hand movements in both able-bodied subjects and arm amputees. Compared to a 5-Hz high-pass cut-off frequency, excluding the EMG components below 60 Hz decreased the average accuracy of 0.1% in classifying the 11 movements across able-bodied subjects and increased the average accuracy of 0.1 and 0.4% among the transradial (TR) and shoulder disarticulation (SD) amputees, respectively. Using a 500 Hz instead of a 1-kHz sampling rate, the average classification accuracy only dropped about 2.0% in arm amputees. The combination of sampling rate and high-pass cut-off frequency of 500 and 60 Hz only resulted in about 2.3% decrease in average accuracy for TR amputees and 0.4% decrease for SD amputees in comparison to the generally used values of 1 kHz and 5 Hz. These results suggest that the combination of sampling rate of 500 Hz and high-pass cut-off frequency of 60 Hz should be an optimal selection in EMG recordings for recognition of different arm movements without sacrificing too much of classification accuracy which can also remove most of motion artifacts and power-line interferences for improving the performance of myoelectric prosthesis control.
引用
收藏
页码:1779 / 1787
页数:8
相关论文
共 30 条
  • [21] DYNAMIC HAND MOTION RECOGNITION BASED ON TRANSIENT AND STEADY-STATE EMG SIGNALS
    Yang, Dapeng
    Zhao, Jingdong
    Jiang, Li
    Liu, Hong
    INTERNATIONAL JOURNAL OF HUMANOID ROBOTICS, 2012, 9 (01)
  • [22] Multifunctional sensors for surface synchronized monitoring of Pressure/ Biopotential signals and motion recognition
    Niu, Xin
    Dou, Ruoxi
    Sun, Haibo
    Luo, Dan
    Liu, Hao
    CHEMICAL ENGINEERING JOURNAL, 2024, 496
  • [23] Motion Intention Prediction and Joint Trajectories Generation Toward Lower Limb Prostheses Using EMG and IMU Signals
    Wang, Yansong
    Cheng, Xu
    Jabban, Leen
    Sui, Xiaohong
    Zhang, Dingguo
    IEEE SENSORS JOURNAL, 2022, 22 (11) : 10719 - 10729
  • [24] Study on Recognition of Upper Limb Motion Pattern Using surface EMG signals for Bilateral Rehabilitation
    Song, Zhibin
    Guo, Shuxiang
    Pang, Muye
    Zhang, Songyuan
    2012 INTERNATIONAL SYMPOSIUM ON MICRO-NANOMECHATRONICS AND HUMAN SCIENCE (MHS), 2012, : 425 - 430
  • [25] Intelligent EMG Pattern Recognition Control Method for Upper-Limb Multifunctional Prostheses: Advances, Current Challenges, and Future Prospects
    Samuel, Oluwarotimi Williams
    Asogbon, Mojisola Grace
    Geng, Yanjuan
    Al-Timemy, Ali H.
    Pirbhulal, Sandeep
    Ji, Ning
    Chen, Shixiong
    Fang, Peng
    Li, Guanglin
    IEEE ACCESS, 2019, 7 : 10150 - 10165
  • [26] Target Achievement Control Test: Evaluating real-time myoelectric pattern-recognition control of multifunctional upper-limb prostheses
    Simon, Ann M.
    Hargrove, Levi J.
    Lock, Blair A.
    Kuiken, Todd A.
    JOURNAL OF REHABILITATION RESEARCH AND DEVELOPMENT, 2011, 48 (06): : 619 - 627
  • [27] Finger Motion Estimation Based on Frequency Conversion of EMG Signals and Image Recognition Using Convolutional Neural Network
    Asai, Kikuo
    Takase, Norio
    2017 17TH INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION AND SYSTEMS (ICCAS), 2017, : 1366 - 1371
  • [28] Optimized Recognition Method of Surface EMG Signals Multi- Parameters Based on Different Lower Limb Motion Velocity
    Li, Sujiao
    Lan, He
    Liu, Su
    Yu, Hongliu
    2018 3RD ASIA-PACIFIC CONFERENCE ON INTELLIGENT ROBOT SYSTEMS (ACIRS 2018), 2018, : 1 - 6
  • [29] A comparison of upper-limb motion pattern recognition using EMG signals during dynamic and isometric muscle contractions
    Tsai, An-Chih
    Hsieh, Tsung-Han
    Luh, Jer-Junn
    Lin, Ta-Te
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2014, 11 : 17 - 26
  • [30] A novel procedure to automate the removal of PLI and motion artifacts using mode decomposition to enhance pattern recognition of sEMG signals for myoelectric control of prosthesis
    Koppolu, Pratap Kumar
    Chemmangat, Krishnan
    BIOMEDICAL PHYSICS & ENGINEERING EXPRESS, 2024, 10 (06):