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Updated ICA Weight Matrix for Lower Limb Myoelectric Classification
Ganesh R. Naik
College of Medicine and Public Health
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Chapter in Book/Report/Conference proceeding
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peer-review
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Computer Science
Independent Component Analysis
100%
Electromyography
50%
Independent Component
50%
Linear Discriminant Analysis
25%
Feature Reduction
25%
Discriminant Analysis
25%
Individual Characteristic
25%
Computational Intelligence
25%
Pattern Recognition
25%
Artificial Intelligence
25%
Healthy Subject
25%
Classification Accuracy
25%
Classification Scheme
25%
Domain Feature
25%
Engineering
Independent Component Analysis
100%
Multichannel
50%
Independent Component
50%
Time Domain
25%
Classification Accuracy
25%
Pattern Recognition
25%
Classification Scheme
25%
Healthy Subject
25%
Domain Feature
25%
Artificial Intelligence
25%
Medicine and Dentistry
Lower Limb
100%
Independent Component Analysis
100%
Electromyography
50%
Discriminant Analysis
50%
Arm
25%
Upper Limb
25%
Pattern Recognition
25%
Earth and Planetary Sciences
Discriminant Analysis
100%
Weight Analysis
100%
Artificial Intelligence
50%
Material Science
Surface (Surface Science)
100%
Pattern Recognition
50%