ROHCFeb 1, 2018

EMG Pattern Classification to Control a Hand Orthosis for Functional Grasp Assistance after Stroke

arXiv:1802.00373v155 citations
Originality Incremental advance
AI Analysis

This addresses functional grasp assistance for stroke survivors, but it is incremental as it builds on existing EMG control methods.

The study tackled controlling a hand orthosis for stroke survivors using EMG pattern classification to enable pick and place tasks, achieving results that support feasibility in functional contexts.

Wearable orthoses can function both as assistive devices, which allow the user to live independently, and as rehabilitation devices, which allow the user to regain use of an impaired limb. To be fully wearable, such devices must have intuitive controls, and to improve quality of life, the device should enable the user to perform Activities of Daily Living. In this context, we explore the feasibility of using electromyography (EMG) signals to control a wearable exotendon device to enable pick and place tasks. We use an easy to don, commodity forearm EMG band with 8 sensors to create an EMG pattern classification control for an exotendon device. With this control, we are able to detect a user's intent to open, and can thus enable extension and pick and place tasks. In experiments with stroke survivors, we explore the accuracy of this control in both non-functional and functional tasks. Our results support the feasibility of developing wearable devices with intuitive controls which provide a functional context for rehabilitation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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