A characterization of the effect of limb position on EMG features to guide the development of effective prosthetic control schemes
Autor: | Kevin Englehart, Erik Scheme, Ashkan Radmand |
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Rok vydání: | 2015 |
Předmět: |
Adult
Male business.industry Computer science Electromyography Pattern recognition Extremities Repeatability Pattern Recognition Automated Young Adult medicine.anatomical_structure mental disorders Activities of Daily Living medicine Upper limb Cluster Analysis Humans Computer vision Female Artificial intelligence business Wireless Technology |
Zdroj: | EMBC |
ISSN: | 2694-0604 |
Popis: | Electromyogram (EMG) pattern recognition has long been used for the control of upper limb prostheses. More recently, it has been shown that variability induced during functional use, such as changes in limb position and dynamic contractions, can have a substantial impact on the robustness of EMG pattern recognition. This work further investigates the reasons for pattern recognition performance degradation due to the limb position variation. The main focus is on the impact of limb position variation on features of the EMG, as measured using separability and repeatability metrics. The results show that when the limb is moved to a position different from the one in which the classifier is trained, both the separability and repeatability of the data decrease. It is shown how two previously proposed classification methods, multiple position training and dual-stage classification, resolve the position effect problem to some extent through increasing either separability or repeatability but not both. A hybrid classification method which exhibits a compromise between separability and repeatability is proposed in this work. It is shown that, when tested with the limb in 16 different positions, this method increases classification accuracy from an average of 70% (single position training) to 89% (hybrid approach). This hybrid method significantly (p |
Databáze: | OpenAIRE |
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