Land Cover Classification of Full Polarimetric PALSAR Images using Decision Tree based on Intensity and Texture Statistical Features

G. Krishna, Vikas Mittal
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引用次数: 1

Abstract

Although there are numerous land cover classification methods, still some restraints presents while labelling distinct classes to which it actually belongs to, without any past available information For an SAR image backscattering coefficient and its texture are significant characteristic to portray an image. In this paper, a classification technique for PALSAR image using decision tree based on intensity and its texture statistical features has been developed. The statistic texture features like homogeneity, mean, entropy, variance, contrast, correlation, dissimilarity, and second moment is analyzed and their capability to classify SAR image into diverse land cover classes has been evaluated. The Seperability index idea is used to analyze the prominence of texture features in classifying each land cover class from remaining classes. The proposed classification method is applied on ALOS PALSAR HV polarized image. The decision tree based classifier uses these data to classify individual pixel into one of the four categories: water, bare soil, urban and vegetation. The quantitative results shown by the proposed method gives overall classification accuracy of about 95.88% and kappa coefficient of 0.9490.
基于强度和纹理统计特征的决策树全偏振PALSAR影像土地覆盖分类
虽然有许多土地覆盖分类方法,但在没有任何过去可用信息的情况下,在标记其实际所属的不同类别时仍然存在一些限制。SAR图像的后向散射系数及其纹理是描绘图像的重要特征。本文提出了一种基于灰度和纹理统计特征的决策树对PALSAR图像进行分类的方法。分析了均匀性、均值、熵、方差、对比度、相关性、不相似度和秒矩等统计纹理特征,并评价了它们对不同土地覆盖类型的分类能力。利用可分性指数思想分析了纹理特征在土地覆盖分类中的突出性。将该方法应用于ALOS PALSAR HV偏振图像。基于决策树的分类器使用这些数据将单个像素分为四类:水、裸土、城市和植被。定量结果表明,该方法总体分类准确率约为95.88%,kappa系数为0.9490。
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