Convolutional neural network proposal for wrist position classification from electromyography signals Chapter

abstract

  • Commonly, electromyography (EMG) signals have been employed for movements or pattern classification. For this, different digital signals processing methods are applied to extract features, before a classification stage. The present work deals with a proposal based on the use of image classification employing deep learning techniques. The images were obtained from a spectrogram analysis as a previous process of the convolutional neural network employment. Then, a classification of five positions from wrist movements is carried out the model. Results showed that the accuracy is comparable to similar techniques employed with a shallow neural network and a deep neural network applied to the same dataset.

publication date

  • 2020-8-7

keywords

  • Deep Learning
  • Deep learning
  • Deep neural networks
  • Digital signal processing
  • Electromyography
  • Image Classification
  • Image classification
  • Learning
  • Model
  • Movement
  • Neural Networks
  • Neural networks
  • Pattern Classification
  • Pattern recognition
  • Signal Processing
  • Spectrogram

ISBN

  • 9781728194066