Title :
The design of a nonparametric hierarchical classifier
Author :
Tseng, Chea-Tin Tim ; Moret, Bernard M E
Author_Institution :
Eberex Syst. Inc., Fremont, CA, USA
Abstract :
The authors propose a method based on kernel density estimates to partition sequentially the feature space along the best feature axis (either one of the original axes or one obtained by a carefully developed one-dimensional linear feature transformation). This method alleviates the storage and classification speed problems of traditional kernel-based classifiers without losing their flexibility and their relative insensitivity to dimensionality. The authors present a simple procedure and a distribution-free criterion for finding a good smoothing parameter for the kernel density estimate and develop a one-dimensional feature linear transformation based on correlation between density functions, which can be applied regardless of the geometrical structure of the data. The authors´ proposals are validated by theoretical results and by simulations. An application to the severely under-sampled problem of texture classification (only 32 design samples per class in 22-dimensional space) is presented
Keywords :
nonparametric statistics; pattern recognition; statistical analysis; distribution-free criterion; feature space; kernel density estimates; kernel-based classifiers; nonparametric hierarchical classifier; sequential partitioning; smoothing parameter; texture classification; Decision making; Density functional theory; Error analysis; Histograms; Kernel; Maximum likelihood estimation; Pattern recognition; Probability density function; Probability distribution; Smoothing methods;
Conference_Titel :
Pattern Recognition, 1990. Proceedings., 10th International Conference on
Conference_Location :
Atlantic City, NJ
Print_ISBN :
0-8186-2062-5
DOI :
10.1109/ICPR.1990.118140