AI Article Synopsis

  • The paper addresses the challenge of precisely controlling a multifunctional prosthetic hand's pinch type and force using myoelectric signals.
  • It introduces an attribute-driven granular model (AGrM) to classify pinch types and predict fingertip force by using additional attributes captured during EMG signal recording.
  • AGrM significantly improved pinch-type recognition accuracy to 97.2% and maintained over 90% accuracy in force predictions, while being less computationally intensive than other methods.

Article Abstract

Fine multifunctional prosthetic hand manipulation requires precise control on the pinch-type and the corresponding force, and it is a challenge to decode both aspects from myoelectric signals. This paper proposes an attribute-driven granular model (AGrM) under a machine-learning scheme to solve this problem. The model utilizes the additionally captured attribute as the latent variable for a supervised granulation procedure. It was fulfilled for EMG-based pinch-type classification and the fingertip force grand prediction. In the experiments, 16 channels of surface electromyographic signals (i.e., main attribute) and continuous fingertip force (i.e., subattribute) were simultaneously collected while subjects performing eight types of hand pinches. The use of AGrM improved the pinch-type recognition accuracy to around 97.2% by 1.8% when constructing eight granules for each grasping type and received more than 90% force grand prediction accuracy at any granular level greater than six. Further, sensitivity analysis verified its robustness with respect to different channel combination and interferences. In comparison with other clustering-based granulation methods, AGrM achieved comparable pinch recognition accuracy but was of lowest computational cost and highest force grand prediction accuracy.

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Source
http://dx.doi.org/10.1109/TCYB.2019.2931142DOI Listing

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