Multi-Scale Information Extraction From High Resolution Remote Sensing Imagery And Region Partition Methods Based On Gmrf-Svm

J. Luo,D. Ming, Z. Shen,M. Wang, H. Sheng

INTERNATIONAL JOURNAL OF REMOTE SENSING(2007)

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摘要
This paper proposes the work flow of multi-scale information extraction from high resolution remote sensing images based on features: rough classification parcel unit extraction ( subtle segmentation) - expression of features - intelligent illation - information extraction or target recognition. This paper then analyses its theoretical and practical significance for information extraction from enormous amounts of data on a large scale. Based on the spectrum and texture of images, this paper presents a region partition method for high resolution remote sensing images based on Gaussian Markov Random Field (GMRF) Support Vector Machine (SVM), that is the image classification based on GMRF - SVM. This method integrates the advantages of GMRF-based texture classification and SVM-based pattern recognition with small samples and makes it convenient to utilize a priori knowledge. Finally, the paper reports tests on Ikonos images. The experimental results show that the method used here is superior to GMRF-based segmentation in terms of both the time expenditure and processing effect. In addition, it is actually meaningful for the stage of information extraction and target recognition.
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关键词
paper reports test,rough classification-parcel unit extraction,region partition method,multi-scale information extraction,gmrf-based segmentation,high resolution,features-intelligent illation-information extraction,target recognition,svm-based pattern recognition,information extraction,pattern recognition,image classification,spectrum,a priori knowledge,support vector machine
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