Swarm-wavelet based Extreme Learning Machine for Finger Movement Classification on Transradial Amputees
Abstract
The use of a small number of surface
electromyography (EMG) channels on the transradial amputee
in a myoelectric controller is a big challenge. This paper
proposes a pattern recognition system using an extreme
learning machine (ELM) optimized by particle swarm
optimization (PSO). PSO is mutated by wavelet function to
avoid trapped in a local minima. The proposed system is used to
classify eleven imagined finger motions on five amputees by
using only two EMG channels. The optimal performance of
wavelet-PSO was compared to a grid-search method and
standard PSO. The experimental results show that the proposed
system is the most accurate classifier among other tested
classifiers. It could classify 11 finger motions with the average
accuracy of about 94 % across five amputees.
Collections
- LSP-Conference Proceeding [1874]