Paper
14 December 1999 Independent component analysis for remote sensing study
Chi Hau Chen, Xiaohui Zhang
Author Affiliations +
Abstract
Recently there has been much interest in the Independent Component Analysis (ICA) methods for source signal separation. ICA algorithms can be represented by a neural network architecture to decompose a signal or image into components. The potential use of ICA in remote sensing study is examined. For SAR imagery in particular, the use of ICA to enhance the images and to improve the pixel classification is considered. It is shown that ICA processed images generally have lower contrast ratio (standard deviation to mean of an image) which implies a reduced speckle effect. The features extracted by using ICA also are quite effective for pixel classification. There are five pattern classes considered. By using the 9 original SAR images plus all 6 ATM images, the best overall percentage correct is 86.6% which is the same as using 3 ICA and 6 ATM image data. Also ICA is shown to be better than PCA in classification with the same data set. Although the results presented are preliminary, ICA through its de-mixing operations is potentially a useful approach in remote sensing study.
© (1999) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Chi Hau Chen and Xiaohui Zhang "Independent component analysis for remote sensing study", Proc. SPIE 3871, Image and Signal Processing for Remote Sensing V, (14 December 1999); https://doi.org/10.1117/12.373252
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Cited by 46 scholarly publications.
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KEYWORDS
Independent component analysis

Principal component analysis

Synthetic aperture radar

Remote sensing

Image processing

Image classification

Neural networks

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