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Generating-kernel based nonlinear feature extraction methods
Jian Yang,
Chengjun Liu
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Keyphrases
Feature Extraction Methods
100%
Kernel-based
100%
Nonlinear Feature Extraction
100%
Kernel Fisher Discriminant
100%
Function Mapping
66%
Mapping Space
66%
Environmental Systems
33%
Popular
33%
Biometrics
33%
Kernel Methods
33%
Face Recognition Grand Challenge
33%
Experimental Environment
33%
Kernel Function
33%
Training Samples
33%
Fractional Powers
33%
Gaussian Kernel
33%
Arbitrary Functions
33%
Sigmoid Function
33%
Polynomial Kernel
33%
Function Map
33%
Polynomial Function
33%
Power Polynomial
33%
Computer Science
Feature Extraction
100%
Linear Discriminant Analysis
100%
Function Mapping
66%
Grand Challenge
33%
Face Recognition
33%
Biometrics
33%
Component Analysis
33%
Training Sample
33%
Kernel Function
33%
Sigmoid Function
33%
Gaussian Kernel
33%