A CNN-SVM combined model for pattern recognition of knee motion using mechanomyography signals.

Journal: Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology
Published Date:

Abstract

The commonly used classifiers for pattern recognition of human motion, like backpropagation neural network (BPNN) and support vector machine (SVM), usually implement the classification by extracting some hand-crafted features from the human biological signals. These features generally require the domain knowledge for researchers to be designed and take a long time to be tested and selected for high classification performance. In contrast, convolutional neural network (CNN), which has been widely applied to computer vision, can learn to automatically extract features from the training data by means of convolution and subsampling, but CNN training usually requires large sample data and has the overfitting problem. On the other hand, SVM has good generalization ability and can solve the small sample problem. Therefore, we proposed a CNN-SVM combined model to make use of their advantages. In this paper, we detected 4-channel mechanomyography (MMG) signals from the thigh muscles and fed them in the form of time series signals to the CNN-SVM combined model for the pattern recognition of knee motion. Compared with the common classifier performing the classification with hand-crafted features, the CNN-SVM combined model could automatically extract features using CNN, and better improved the generalization ability of CNN and the classification accuracy by means of combining the SVM. This study would provide reference for human motion recognition using other time series signals and further expand the application fields of CNN.

Authors

  • Haifeng Wu
    Institute of Intelligent Machines, Chinese Academy of Sciences, Hefei 230031, China; University of Science and Technology of China, Hefei 230026, China; High Magnetic Field Laboratory, Chinese Academy of Sciences, Hefei 230031, China. Electronic address: wuhf@hmfl.ac.cn.
  • Qing Huang
    Department of Environmental Health and Occupational Medicine,West China School of Public Health,Sichuan University,Chengdu 610041,China.
  • Daqing Wang
    Institute of Intelligent Machines, Chinese Academy of Sciences, Hefei 230031, China; University of Science and Technology of China, Hefei 230026, China.
  • Lifu Gao
    Institute of Intelligent Machines, Chinese Academy of Sciences, Hefei 230031, China. Electronic address: lifugao@iim.ac.cn.