3.8 Article

Gesture recognition for transhumeral prosthesis control using EMG and NIR

Journal

IET CYBER-SYSTEMS AND ROBOTICS
Volume 2, Issue 3, Pages 122-131

Publisher

WILEY
DOI: 10.1049/iet-csr.2020.0008

Keywords

electromyography; medical signal processing; gesture recognition; multilayer perceptrons; artificial limbs; linear discriminant analysis; signal classification; medical control systems; gesture recognition; trans-humeral prosthesis control; myoelectric prosthesis limbs; good quality gesture intent signal; residual anatomy; amputee; classification accuracy; wearable electromyography; hand gesture motions; multilayer perceptron neural network; linear discriminant analysis; quadratic discriminant analysis; sensing configurations; EMG-NIR; ground truth; contrastive basis; wearable sensors; affordable EMG; ergonomic EMG; wearable EMG; NIR sensing; able-bodied participants; offline ultrasound scan

Funding

  1. Canon Medical Systems Ltd
  2. University of Bristol

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A key challenge associated with myoelectric prosthesis limbs is the acquisition of a good quality gesture intent signal from the residual anatomy of an amputee. In this study, the authors aim to overcome this limitation by observing the classification accuracy of the fusion of wearable electromyography (EMG) and near-infrared (NIR) to classify eight hand gesture motions across 12 able-bodied participants. As part of the study, they investigate the classification accuracy across a multi-layer perceptron neural network, linear discriminant analysis and quadratic discriminant analysis for different sensing configurations, i.e. EMG-only, NIR-only and EMG-NIR. A separate offline ultrasound scan was conducted as part of the study and served as a ground truth and contrastive basis for the results picked up from the wearable sensors, and allowed for a closer study of the anatomy along the humerus during gesture motion. Results and findings from the work suggest that it could be possible to further develop transhumeral prosthesis using affordable, ergonomic and wearable EMG and NIR sensing, without the need for invasive neuromuscular sensors or further hardware complexity.

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