Real-time classification of shoulder girdle motions for multifunctional prosthetic hand control: A preliminary study

Int J Artif Organs. 2019 Sep;42(9):508-515. doi: 10.1177/0391398819848003. Epub 2019 May 23.

Abstract

In every country in the world, there are a number of amputees who have been exposed to some accidents that led to the loss of their upper limbs. The aim of this study is to suggest a system for real-time classification of five classes of shoulder girdle motions for high-level upper limb amputees using a pattern recognition system. In the suggested system, the wavelet transform was utilized for feature extraction, and the extreme learning machine was used as a classifier. The system was tested on four intact-limbed subjects and one amputee, with eight channels involving five electromyography channels and three-axis accelerometer sensor. The study shows that the suggested pattern recognition system has the ability to classify the shoulder girdle motions for high-level upper limb motions with 88.4% average classification accuracy for four intact-limbed subjects and 92.8% classification accuracy for one amputee by combining electromyography and accelerometer channels. The outcomes of this study may suggest that the proposed pattern recognition system can help to provide control signals to drive a prosthetic arm for high-level upper limb amputees.

Keywords: Accelerometer; extreme learning machine; pattern recognition; real-time classification; surface electromyography; upper limb amputation.

MeSH terms

  • Amputation Stumps
  • Amputees
  • Artificial Limbs*
  • Electromyography
  • Hand*
  • Humans
  • Movement / physiology*
  • Shoulder / physiology*