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http://dx.doi.org/10.7780/kjrs.2003.19.2.170

Feature Selection for Image Classification of Hyperion Data  

한동엽 (서울대학교 지구환경시스템공학부)
조영욱 (서울대학교 지구환경시스템공학부)
김용일 (서울대학교 지구환경시스템공학부)
이용웅 (국방과학연구소)
Publication Information
Korean Journal of Remote Sensing / v.19, no.2, 2003 , pp. 170-179 More about this Journal
Abstract
In order to classify Land Use/Land Cover using multispectral images, we have to give consequence to defining proper classes and selecting training sample with higher class separability. The process of satellite hyperspectral image which has a lot of bands is difficult and time-consuming. Furthermore, classification result of hyperspectral image with noise is often worse than that of a multispectral image. When selecting training fields according to the signatures in the study area, it is difficult to calculate covariance matrix in some clusters with pixels less than the number of bands. Therefore in this paper we presented an overview of feature extraction methods for classification of Hyperion data and examined effectiveness of feature extraction through the accuracy assesment of classified image. Also we evaluated the classification accuracy of optimal meaningful features by class separation distance, which is also a method for band reduction. As a result, the classification accuracies of feature-extracted image and original image are similar regardless of classifiers. But the number of bands used and computing time were reduced. The classifiers such as MLC, SAM and ECHO were used.
Keywords
Hyperion; Hyperspectral; Classification; Feature Extraction; Separability;
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