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A machine learning based method for classification of fractal features of forearm sEMG using Twin Support Vector Machines

conference contribution
posted on 2024-10-31, 10:00 authored by Sridhar Poosapadi Arjunan, Dinesh KumarDinesh Kumar, Ganesh R Naik
Classification of surface electromyogram (sEMG) signal is important for various applications such as prosthetic control and human computer interface. Surface EMG provides a better insight into the strength of muscle contraction which can be used as control signal for different applications. Due to the various interference between different muscle activities, it is difficult to identify movements using sEMG during low-level flexions. A new set of fractal features - fractal dimension and Maximum fractal length of sEMG has been previously reported by the authors.These features measure the complexity and strength of the muscle contraction during the low-level finger flexions. In order to classify and identify the low-level finger flexions using these features based on the fractal properties, a recently developed machine learning based classifier, Twin Support vector machines (TSVM) has been proposed. TSVM works on basic learning methodology and solves the classification tasks as two SVMs for each classes. This paper reports the novel method on the machine learning based classification of fractal features of sEMG using the Twin Support vector machines. The training and testing was performed using two different kernel functions - Linear and Radial Basis Function (RBF).

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  1. 1.
    ISBN - Is published in 9781424441242 (urn:isbn:9781424441242)

Start page

4821

End page

4824

Total pages

4

Outlet

Proceedings of the 32nd Annual International Conference of the IEEE EMBS

Editors

Ricardo L. Armentano,

Name of conference

32nd Annual International Conference of the IEEE EMBS

Publisher

IEEE

Place published

USA

Start date

2010-08-31

End date

2010-09-04

Language

English

Copyright

© 2010 IEEE

Former Identifier

2006020103

Esploro creation date

2020-06-22

Fedora creation date

2011-11-08

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