dc.description.abstract | An accurate finger movement recognition is
required in many robotics prosthetics and assistive hand
devices. The use of a small number of Electromyography
(EMG) channels for classifying the finger movement is a
challenging task. This paper proposes a novel recognition
system which employs Spectral Regression Discriminant
Analysis (SRDA) for dimensionality reduction, kernel-based
Extreme Learning Machine (ELM) for classification and the
majority vote for classification smoothness. Particle Swarm
Optimization (PSO) is used to optimize the kernel-based ELM.
Three hybridizations with three kernels, radial basis function
(SRBF-ELM), linear (SLIN-ELM), and polynomial (SPOLY-
ELM) are introduced. The experimental results show that
SRBF-ELM significantly outperforms SLIN-ELM but not too
much different compared to SPOLY-LIN. Moreover, PSO is
able to optimize the three systems by giving the accuracy more
than 90% with the highest accuracy is ~94%. | en_US |