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2019

Stable Electromyographic Sequence Prediction During Movement Transitions using Temporal Convolutional Networks


Abstract

Transient muscle movements influence the temporal structure of myoelectric signal patterns, often leading to unstable prediction behavior from movement-pattern classification methods. We show that temporal convolutional network sequential models leverage the myoelectric signal’s history to discover contextual temporal features that aid in correctly predicting movement intentions, especially during interclass transitions. We demonstrate myoelectric classification using temporal convolutional networks to effect 3 simultaneous hand and wrist degrees-of-freedom in an experiment involving nine human-subjects. Temporal convolutional networks yield significant(p<0.001)performance improvements over other state-of-the-art methods in terms of both classification accuracy and stability.

Citation

@inproceedingsBetthauser_2019 doi: 10.1109/ner.2019.8717169 url: https://doi.org/10.1109/ner.2019.8717169 year: 2019 month: mar publisher: IEEE author: Betthauser Joseph L. and Krall John T. and Kaliki Rahul R. and Fifer Matthew S. and Thakor Nitish V. title: Stable Electromyographic Sequence Prediction During Movement Transitions using Temporal Convolutional Networks booktitle: 2019 9th International IEEE/EMBS Conference on Neural Engineering (NER)

Citation

@inproceedingsBetthauser_2019 doi: 10.1109/ner.2019.8717169 url: https://doi.org/10.1109/ner.2019.8717169 year: 2019 month: mar publisher: IEEE author: Betthauser Joseph L. and Krall John T. and Kaliki Rahul R. and Fifer Matthew S. and Thakor Nitish V. title: Stable Electromyographic Sequence Prediction During Movement Transitions using Temporal Convolutional Networks booktitle: 2019 9th International IEEE/EMBS Conference on Neural Engineering (NER)