AW-ELM-based Crouch Gait Recognition after ischemic stroke
Abstract
Crouch Gait (CG) can be observed in the
hemiplegia persons after ischemic stroke. Walking with Crouch
Gait (CG) shown a large gaits disorder. This paper explores the
use of adaptive wavelet extreme learning machine (AW-ELM)
to classifying different gait conditions for hemiplegia and
healthy subjects. Three participants having a Crouch Gait
problem with categories of Mild, Moderate, and Severe gait
conditions, also, one Healthy person are used their data in this
work. The recognition system extracting number of time and
frequency domain features for dimensionality reduction. While
for the classification stage, the common Extreme Learning
Machine (ELM) classifiers are used. AW-ELM achieved
maximum testing accuracy up to 91.149 % and with using
majority vote post-processing the accuracy achieves 91.547 %.
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- LSP-Conference Proceeding [1874]