CHENG Xi, SHEN Zhanfeng, LUO Jiancheng, et al. A“global-local”impervious surface area extraction model using multispectral remote sensing images[J]. Journal of Remote Sensing, 2013,17(5):1191-1205.
CHENG Xi, SHEN Zhanfeng, LUO Jiancheng, et al. A“global-local”impervious surface area extraction model using multispectral remote sensing images[J]. Journal of Remote Sensing, 2013,17(5):1191-1205. DOI: 10.11834/jrs.20132251.
This paper presents a"global-local"remote sensing information extract model
which extracts and integrates the spatial and spectral characteristics within the images’ local area. The model can optimize the accuracy of extraction on the pixels with spectral fuzzy. The model can be briefly described into two steps: "global"prior classifier and"local"posteriori classifier. The"global"priori classifier will only classify pixels which are above certain accuracy thresholds
and the "local"posteriori classifier will further explore the information of the already classified pixels from the partial-classified results. The local information will be used to classify the unclassified pixels at the global scale. When extraction of Impervious Surface Area( ISA) experiment
we used Support Vector Machine( SVM) as a priori classifier
which is controlled by an accuracy threshold to output the partial-classified results. We also used an Adjust Minimize Distance Classifier( AMDC) as the posteriori classifier
which integrates the spatial information within local area around the unclassified pixels to classify the pixels with high degree of difficulty of classification by only spectral information. The experiment on the Landsat TM5 image and corresponding National Land Cover Database( NLCD) pro-d ucts as reference indicates that"global-local"model enhanced the accuracy from 80. 31%
which is provided by SVM model
to 82. 73%. Meanwhile
the accuracy of posteriori classifier was enhanced from 54. 27%( SVM) to 59. 94%. The results proved that combine with spatial and spectral information is an effective way for ISA extraction and the"globle-local"model can improve the accuracy of ISA extraction and can obtain more spatially explicit results.