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Comparative analysis of mapping burned areas from landsat TM images
Mazher, A.
2013
关键词SUPPORT VECTOR MACHINES COMPOSITE DATA TIME-SERIES CLASSIFICATION INDEXES
英文摘要Remote sensing is a major source of mapping the burned area caused by forest fire. The focus in this application is to map a single class of interest, i.e. burned area. In this study, three different data combinations were classified using different classifiers and quantitatively compared. The adopted classifiers are Support Vector Data Description (SVDD),a one-class classifier, Binary classifier Support Vector Machines (SVMs) and traditional Maximum Likelihood classifier (ML). At first, the Principal Component Analysis (PCA) was applied to extract the best possible features form the original multispectral image (OMI) and calculated spectral indices (SI). Then the resulting subset of features was applied to the classifiers. The comparative study has undertaken to find firstly, the best possible set of features (data combination) and secondly, an effective classifier to map the burned areas. The best possible set of features was attained by data combination-II (i.e., OMI information). Furthermore, the results of the SVM showed the high classification accuracies than ML. Experimental results demonstrate that even though the SVDD for mapping the burned areas doesn't showed the higher classification accuracy than SVM, but it shows the suitability for the cases with few or poorly represented labelled samples available. The parameters should be further optimized through the use of intelligent training for improving the accuracy of SVDD.; Materials Science, Coatings & Films; Physics, Applied; EI; CPCI-S(ISTP); 0
语种英语
DOI标识10.1088/1742-6596/439/1/012038
内容类型其他
源URL[http://ir.pku.edu.cn/handle/20.500.11897/311852]  
专题地球与空间科学学院
推荐引用方式
GB/T 7714
Mazher, A.. Comparative analysis of mapping burned areas from landsat TM images. 2013-01-01.
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