Surface EMG sensing and granular gesture recognition for rehabilitative pouring tasks: a case study

Congyi Zhang, Dalin Zhou, Yinfeng Fang, Naoyuki Kubota, Zhaojie Ju*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

Surface electromyography (sEMG) non-invasively captures the electrical activity generated by muscle contractions, offering valuable insights into motion intentions. While sEMG has been widely applied to general gesture recognition in rehabilitation, there has been limited exploration of specific, intricate daily tasks, such as the pouring action. Pouring is a common yet complex movement requiring precise muscle coordination and control, making it an ideal focus for rehabilitation studies. This research proposes a granular computing-based deep learning approach utilizing ConvMixer architecture enhanced with feature fusion and granular computing to improve gesture recognition accuracy. Our findings indicate that the addition of hand-crafted features significantly improves model performance; specifically, the ConvMixer model’s accuracy improved from 0.9512 to 0.9929. These results highlight the potential of our approach in rehabilitation technologies and assistive systems for restoring motor functions in daily activities.

Original languageEnglish
Article number229
Number of pages19
JournalBiomimetics
Volume10
Issue number4
DOIs
Publication statusPublished - 7 Apr 2025

Keywords

  • gesture recognition
  • granular computing
  • limb motor function
  • rehabilitation engineering
  • surface electromyography

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