Global land cover classification using MODIS surface reflectance products

H. Shimoda, K. Fukue
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引用次数: 1

Abstract

The objective of this study is to develop high accuracy land cover classification algorithm for Global scale by using multi-temporal MODIS land reflectance products. In this study, time-domain co-occurrence matrix was introduced as a classification feature which provides time-series signature of land covers. Further, the non-parametric minimum distance classifier was introduced for time-domain co-occurrence matrix, which performs multi-dimensional pattern matching for time-domain co-occurrence matrices of a classification target pixel and each classification classes. The global land cover classification experiments have been conducted by applying the proposed classification method using 46 multi-temporal(in one year) SR(Surface Reflectance 8-Day L3) and NBAR(Nadir BRDF-Adjusted Reflectance 16-Day L3) products, respectively. IGBP 17 land cover categories were used in our classification experiments. As the results, SR product and NBAR product showed similar classification accuracy of 99%.
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利用MODIS地表反射率产品进行全球土地覆盖分类
本研究的目的是利用多时相MODIS土地反射率产品,开发全球尺度下高精度的土地覆盖分类算法。本文引入时域共现矩阵作为分类特征,提供了土地覆被的时序特征。在此基础上,引入时域共现矩阵的非参数最小距离分类器,对分类目标像素与各分类类的时域共现矩阵进行多维模式匹配。采用该分类方法,利用46个多时(1年)SR(地表反射率8天L3)和NBAR(Nadir BRDF-Adjusted Reflectance 16天L3)产品分别进行了全球土地覆盖分类实验。在我们的分类实验中使用了IGBP的17个土地覆盖类别。结果表明,SR产品与NBAR产品的分类准确率相近,均为99%。
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