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Lookup NU author(s): Dr Sigrid Dupan
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Performance and efficacy of neuroprosthetic devices depend critically on the ability to detect the users motor intent with high temporal resolution. Delayed and incorrect responses significantly reduce usability, controllability and intuitiveness of prosthetic systems. Substantial efforts have been conducted to detect the steady-state phase of motor intention. However, detection, classification, and tracking of transient phases for one complete muscle contraction is still not possible. Clinically-established control systems rely mainly on surface electromyography (sEMG) signals in stationary, steady-state contractions, that have limited temporal resolution. Characterization of neural activities during different stages of a dynamic, transient contraction would allow for the development of a clinically-viable myoelectric system with a high temporal resolution that can significantly enhance the level of intuitiveness and usability of prosthetic devices. This could increase the response bandwidth and realize natural and dexterous control while avoiding exaggerated compensatory movements. For this purpose, in this paper, we explore the use of motor unit action potential trains (MUAPTs) for designing a movement intention detection technique. The goal is to classify and track the transient phases of muscle activation. Data collected from three subjects, during flexion tasks with four individual digits, is used to evaluate the algorithm. The performance is compared with that of the standard sEMG-based approach. Results showed a substantial advantage of the MUAPT-based phase detection algorithm over the conventional sEMG-based technique. It is confirmed that decoding, classification, and tracking of all stages of a dynamic, transient contraction is feasible using the proposed MUAPT-based approach, as a robust and efficient alternative for conventional sEMG-based algorithms.
Author(s): Stachaczyk M, Atashzar SF, Dupan S, Vujaklija I, Farina D
Publication type: Conference Proceedings (inc. Abstract)
Publication status: Published
Conference Name: 9th International IEEE/EMBS Conference on Neural Engineering (NER 2019)
Year of Conference: 2019
Online publication date: 20/05/2019
Acceptance date: 04/03/2019
ISSN: 1948-3554
Publisher: IEEE
URL: https://doi.org/10.1109/NER.2019.8717077
DOI: 10.1109/NER.2019.8717077
Library holdings: Search Newcastle University Library for this item
ISBN: 9781538679210