4.7 Article

Online Grasp Force Estimation From the Transient EMG

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNSRE.2020.3022587

Keywords

Electromyography; Transient analysis; Muscles; Force; Prediction algorithms; Task analysis; Electrodes; Grasp force control; hand prosthetics; myoelectric control; regularized linear regression; transient EMG

Funding

  1. European Commission through the Dexterous Transradial Osseointegrated Prosthesis with neural control and sensory feedback (DeTOP) Project [LEIT-ICT-24-2015, GA 687905]
  2. Italian National Workers' Compensation (INAIL) through the CECA2020 Project
  3. Italian Ministry of University and Research through the Activity Recognition and Limb position Effect compensation for Myokinetic hand prostheses (ARLEM) Project [R16H2KJRHA]
  4. European Research Council through the bidirectional myokinetic implanted interface for natural control of artificial limbs (MYKI) Project [ERC-2015-StG, 679820]

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Myoelectric upper limb prostheses are controlled using information from the electrical activity of residual muscles (i.e. the electromyogram, EMG). EMG patterns at the onset of a contraction (transient phase) have shown predictive information about upcoming grasps. However, decoding this information for the estimation of the grasp force was so far overlooked. In a previous offline study, we proved that the transient phase of the EMG indeed contains information about the grasp force and determined the best algorithm to extract this information. Here we translated those findings into an online platform to be tested with both non-amputees and amputees. The platform was tested during a pick and lift task (tri-digital grasp) with light objects (200 g - 1 kg), for which fine control of the grasp force is more important. Results show that, during this task, it is possible to estimate the target grasp force with an absolute error of 2.06 (1.32) % and 2.04 (0.49) % the maximum voluntary force for non-amputee and amputees, respectively, using information from the transient phase of the EMG. This approach would allow for a biomimetic regulation of the grasp force of a prosthetic hand. Indeed, the users could contract their muscles only once before the grasp begins with no need to modulate the grasp force for the whole duration of the grasp, as required with continuous classifiers. These results pave the way to fast, intuitive and robust myoelectric controllers of limb prostheses.

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