IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2024)

Channel Selection for Gesture Recognition Using Force Myography: A Universal Model for Gesture Measurement Points

  • Ziyu Xiao,
  • Zihao Du,
  • Zefeng Yan,
  • Tiantian Huang,
  • Denan Xu,
  • Qin Huang,
  • Bin Han

DOI
https://doi.org/10.1109/TNSRE.2024.3403941
Journal volume & issue
Vol. 32
pp. 2016 – 2026

Abstract

Read online

Gesture recognition has emerged as a significant research domain in computer vision and human-computer interaction. One of the key challenges in gesture recognition is how to select the most useful channels that can effectively represent gesture movements. In this study, we have developed a channel selection algorithm that determines the number and placement of sensors that are critical to gesture classification. To validate this algorithm, we constructed a Force Myography (FMG)-based signal acquisition system. The algorithm considers each sensor as a distinct channel, with the most effective channel combinations and recognition accuracy determined through assessing the correlation between each channel and the target gesture, as well as the redundant correlation between different channels. The database was created by collecting experimental data from 10 healthy individuals who wore 16 sensors to perform 13 unique hand gestures. The results indicate that the average number of channels across the 10 participants was 3, corresponding to an 75% decrease in the initial channel count, with an average recognition accuracy of 94.46%. This outperforms four widely adopted feature selection algorithms, including Relief-F, mRMR, CFS, and ILFS. Moreover, we have established a universal model for the position of gesture measurement points and verified it with an additional five participants, resulting in an average recognition accuracy of 96.3%. This study provides a sound basis for identifying the optimal and minimum number and location of channels on the forearm and designing specialized arm rings with unique shapes.

Keywords