Open Access
2014 Reduction of Multidimensional Image Characteristics Based on Improved KICA
Jia Dongyao, Ai Yanke, Zou Shengxiong
J. Appl. Math. 2014: 1-6 (2014). DOI: 10.1155/2014/256206


The domestic and overseas studies of redundant multifeatures and noise in dimension reduction are insufficient, and the efficiency and accuracy are low. Dimensionality reduction and optimization of characteristic parameter model based on improved kernel independent component analysis are proposed in this paper; the independent primitives are obtained by KICA (kernel independent component analysis) algorithm to construct an independent group subspace, while using 2DPCA (2D principal component analysis) algorithm to complete the second order related to data and further reduce the dimension in the above method. Meanwhile, the optimization effect evaluation method based on Amari error and average correlation degree is presented in this paper. Comparative simulation experiments show that the Amari error is less than 6%, the average correlation degree is stable at 97% or more, and the parameter optimization method can effectively reduce the dimension of multidimensional characteristic parameters.


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Jia Dongyao. Ai Yanke. Zou Shengxiong. "Reduction of Multidimensional Image Characteristics Based on Improved KICA." J. Appl. Math. 2014 1 - 6, 2014.


Published: 2014
First available in Project Euclid: 1 October 2014

Digital Object Identifier: 10.1155/2014/256206

Rights: Copyright © 2014 Hindawi

Vol.2014 • 2014
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