Computational burden due to high dimensionality of Hyperspectral images is an obstacle in efficient analysis and
processing of Hyperspectral images. In this paper, we use Kernel Independent Component Analysis (KICA) for
dimensionality reduction of Hyperspectraql images based on band selection. Commonly used ICA and PCA based
dimensionality reduction methods do not consider non linear transformations and assumes that data has non-gaussian
distribution. When the relation of source signals (pure materials) and observed Hyperspectral images is nonlinear then
these methods drop a lot of information during dimensionality reduction process. Recent research shows that kernel-based
methods are effective in nonlinear transformations. KICA is robust technique of blind source separation and can
even work on near-gaussina data. We use Kernel Independent Component Analysis (KICA) for the selection of
minimum number of bands that contain maximum information for detection in Hyperspectral images. The reduction of
bands is basd on the evaluation of weight matrix generated by KICA. From the selected lower number of bands, we
generate a new spectral image with reduced dimension and use it for hyperspectral image analysis. We use this technique
as preprocessing step in detection and classification of poultry skin tumors. The hyperspectral iamge samples of chicken
tumors used contain 65 spectral bands of fluorescence in the visible region of the spectrum. Experimental results show
that KICA based band selection has high accuracy than that of fastICA based band selection for dimensionality reduction
and analysis for Hyperspectral images.
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