Quick Search Adv. Search

Journal of Bionic Engineering ›› 2019, Vol. 16 ›› Issue (3): 455-467.doi: https://doi.org/10.1007/s42235-019-0037-0

Previous Articles     Next Articles

Grasping Force Estimation by sEMG Signals and Arm Posture:Tensor Decomposition Approach

Sanghyun Kim1, Joowan Kim1, Mingon Kim1, Seungyeon Kim1, Jaeheung Park1,2*   

  1. 1. Department of Transdisciplinary Studies, Seoul National University, Suwon 16229, Korea
    2. Advanced Institutes of Convergence Technology, Suwon 16229, Korea
  • Online:2019-05-10 Published:2019-06-14
  • Contact: Jaeheung Park E-mail:park73@snu.ac.kr
  • About author:Sanghyun Kim1, Joowan Kim1, Mingon Kim1, Seungyeon Kim1, Jaeheung Park1,2*

Abstract: Grasping force estimation using surface Electromyography (sEMG) has been actively investigated as it can increase the manipula-bility and dexterity of prosthetic hands and robotic hands. Most of the current studies in this area only focus on finding the relationship between sEMG signals and the grasping force without considering the arm posture. Therefore, regression models are not suitable to predict grasping force in various arm postures. In this paper, a method to predict the grasping force from sEMG signals and various grasping postures is developed. The proposed algorithm uses a tensor algebra to train a multi-factor model relevant to sEMG signals corresponding to various grasping forces and postures of the wrist and forearm in multiple dimensions. The multi-factor model is then decomposed into four independent factor spaces of the grasping force, sEMG signals, wrist posture, and forearm posture. Moreover, when a participant executes a new posture, new factors for the wrist and forearm are interpolated in the factor spaces. Thus, the grasping force with various postures can be predicted by combining these factors. The effectiveness of the proposed method is verified through experiments with ten healthy subjects, demonstrating the higher performance of proposed grasping force prediction method than the previous algorithm.

Key words: surface Electromyography (sEMG), grasping force, force estimation, tensor decomposition