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AIPR
2003
IEEE

Band Selection Using Independent Component Analysis for Hyperspectral Image Processing

13 years 9 months ago
Band Selection Using Independent Component Analysis for Hyperspectral Image Processing
Although hyperspectral images provide abundant information about objects, their high dimensionality also substantially increases computational burden. Dimensionality reduction offers one approach to Hyperspectral Image (HSI) analysis. Currently, there are two methods to reduce the dimension, band selection and feature extraction. In this paper, we present a band selection method based on Independent Component Analysis (ICA). This method, instead of transforming the original hyperspectral images, evaluates the weight matrix to observe how each band contributes to the ICA unmixing procedure. It compares the average absolute weight coefficients of individual spectral bands and selects bands that contain more information. As a significant benefit, the ICA-based band selection retains most physical features of the spectral profiles given only the observations of hyperspectral images. We compare this method with ICA transformation and Principal Component Analysis (PCA) transformation on...
Hongtao Du, Hairong Qi, Xiaoling Wang, Rajeev Rama
Added 04 Jul 2010
Updated 04 Jul 2010
Type Conference
Year 2003
Where AIPR
Authors Hongtao Du, Hairong Qi, Xiaoling Wang, Rajeev Ramanath, Wesley E. Snyder
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