Title :
Mapping burned areas from Landsat TM imags: A comparative study
Author :
Mazher, Abeer ; Peijun Li ; Jun Zhang
Author_Institution :
Inst. of Remote Sensing, Peking Univ., Beijing, China
Abstract :
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 the Support Vector Data Descriptor (SVDD), a one-class classifier, the Binary Support Vector Machines (SVMs) classifier and the 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 in the classification process. 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. Experimental results indicate that the best possible set of features was attained by data combination-III (i.e., combining SI and OMI information) in the study area. Furthermore, the results of the SVM showed the higher classification accuracies than the ML, but approximately equivalent to the SVDD, which only requires training samples from the class of interest. Experimental results also demonstrate that even though the SVDD for mapping the burned areas doesn´t showed the higher classification accuracy than the SVM, but it shows the suitability for the cases with few or poorly represented labeled samples available. The parameters should be further optimized through the use of intelligent training for improving the accuracy of the SVDD.
Keywords :
image classification; maximum likelihood estimation; principal component analysis; remote sensing; support vector machines; PCA; andsat TM images; binary support vector machines; burned areas mapping; classification accuracy; data combination-III; forest fire; intelligent training; maximum likelihood classifier; one-class classifier; original multispectral image; principal component analysis; remote sensing; spectral indices; support vector data descriptor; Accuracy; Fires; Image resolution; Monitoring; Sensors; Silicon; Support vector machines; Feature extraction; One-class classification; Principal components; Support vector data descriptor; Support vector machines; Vegetation indices;
Conference_Titel :
Computer Vision in Remote Sensing (CVRS), 2012 International Conference on
Conference_Location :
Xiamen
Print_ISBN :
978-1-4673-1272-1
DOI :
10.1109/CVRS.2012.6421276