Medical Engineering & Physics
Volume 32, Issue 2 , Pages 126-135, March 2010

A discriminant bispectrum feature for surface electromyogram signal classification

Institute of Robotics, School of Mechanical Engineering, Shanghai Jiao Tong University, Dongchuan Road 800, Shanghai 200240, China

Received 11 March 2009; received in revised form 30 October 2009; accepted 31 October 2009. published online 03 December 2009.

Abstract 

This paper presents a discriminant bispectrum (DBS) feature extraction approach to surface electromyogram (sEMG) signal classification for prosthetic control. The proposed feature extraction method involves two steps: (1) the bispectrum matrix integration, and (2) the Fisher linear discriminant (FLD) projection. We compare DBS with other conventional features, such as autoregressive coefficients, root mean square, power spectral distribution and time domain statistics. First, the separability of the features is investigated by the visualization of feature distribution in the FLD subspace and quantitative measurement (Davies–Boulder clustering index). Then four linear and non-linear classifiers are used to evaluate the discriminative powers of the features in terms of classification accuracy (CA). The experimental results show that DBS has better performance than other features for identifying the motion patterns of sEMG signals, and the best CA result of DBS is 99.4%.

Keywords: Classification, sEMG signal, Discriminant bispectrum feature, Prosthetic control

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PII: S1350-4533(09)00232-X

doi:10.1016/j.medengphy.2009.10.016

Medical Engineering & Physics
Volume 32, Issue 2 , Pages 126-135, March 2010