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Recurrent Convolutional Neural Networks as an Approach to Position-Aware Myoelectric Prosthesis Control

Heather E. Williams, Ahmed W. Shehata, Michael R. Dawson, Erik Scheme, Jacqueline S. Hebert, Patrick M. Pilarski

2022IEEE Transactions on Biomedical Engineering53 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: Persons with normal arm function can perform complex wrist and hand movements over a wide range of limb positions. However, for those with transradial amputation who use myoelectric prostheses, control across multiple limb positions can be challenging, frustrating, and can increase the likelihood of device abandonment. In response, the goal of this research was to investigate convolutional neural network (RCNN)-based position-aware myoelectric prosthesis control strategies. METHODS: Surface electromyographic (EMG) and inertial measurement unit (IMU) signals, obtained from 16 non-disabled participants wearing two Myo armbands, served as inputs to RCNN classification and regression models. Such models predicted movements (wrist flexion/extension and forearm pronation/supination), based on a multi-limb-position training routine. RCNN classifiers and RCNN regressors were compared to linear discriminant analysis (LDA) classifiers and support vector regression (SVR) regressors, respectively. Outcomes were examined to determine whether RCNN-based control strategies could yield accurate movement predictions, while using the fewest number of available Myo armband data streams. RESULTS: values of 84.93% for wrist flexion/extension and 84.97% for forearm pronation/supination (versus the SVR's 77.26% and 60.73%, respectively). The control strategies that employed these models required fewer than all available data streams. CONCLUSION: RCNN-based control strategies offer novel means of mitigating limb position challenges. SIGNIFICANCE: This research furthers the development of improved position-aware myoelectric prosthesis control.

Topics & Concepts

Inertial measurement unitForearmWristArtificial intelligenceLinear discriminant analysisElectromyographyPhysical medicine and rehabilitationSupport vector machineComputer scienceConvolutional neural networkWearable computerPattern recognition (psychology)MedicineEmbedded systemPathologyRadiologyMuscle activation and electromyography studiesProsthetics and Rehabilitation RoboticsAdvanced Sensor and Energy Harvesting Materials