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Instinctive Real-time sEMG-based Control of Prosthetic Hand with Reduced Data Acquisition and Embedded Deep Learning Training

Zeyu Yang, Angus B. Clark, Digby Chappell, Nicolás Rojas

20222022 International Conference on Robotics and Automation (ICRA)13 citationsDOI

Abstract

Achieving instinctive multi-grasp control of prosthetic hands typically still requires a large number of sensors, such as electromyography (EMG) electrodes mounted on a residual limb, that can be costly and time consuming to position, with their signals difficult to classify. Deep-learning-based EMG classifiers however have shown promising results over traditional methods, yet due to high computational requirements, limited work has been done with in-prosthetic training. By targeting specific muscles non-invasively, separating grasping action into hold and release states, and implementing data augmentation, we show in this paper that accurate results for embedded, instinctive, multi-grasp control can be achieved with only 2 low-cost sensors, a simple neural network, and minimal amount of training data. The presented controller, which is based on only 2 surface EMG (sEMG) channels, is implemented in an enhanced version of the OLYMPIC prosthetic hand. Results demonstrate that the controller is capable of identifying all 7 specified grasps and gestures with 93% accuracy, and is successful in achieving several real-life tasks in a real world setting.

Topics & Concepts

GRASPProsthetic handComputer scienceArtificial intelligenceController (irrigation)ElectromyographyInstinctArtificial neural networkData acquisitionMachine learningPhysical medicine and rehabilitationEvolutionary biologyAgronomyMedicineOperating systemBiologyProgramming languageMuscle activation and electromyography studiesNeuroscience and Neural EngineeringEEG and Brain-Computer Interfaces
Instinctive Real-time sEMG-based Control of Prosthetic Hand with Reduced Data Acquisition and Embedded Deep Learning Training | Litcius