首页> 外文会议>Geoscience and Remote Sensing Symposium, 2003. IGARSS '03. Proceedings. 2003 IEEE International >Application of Gaussian Markov random field model to unsupervised classification in polarimetric SAR image
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Application of Gaussian Markov random field model to unsupervised classification in polarimetric SAR image

机译:高斯马尔可夫随机场模型在极化SAR图像无监督分类中的应用。

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The aim of this paper is to demonstrate that the Gaussian Markov random field (GMRF) model can be successfully applied to the classification pf multi-frequency polarimetric SAR data. As a special case of MRF, the GMRF has been shown to be an accurate compact representation from a single-band textured images or multi-band textured images. To apply the method to the classification of inter-channel correlated polarimetric SAR data, we first transformed the data into combination of uncorrelated principal component images. Both intensities (hh, hv, and vv) and phase difference (/spl phi//sub hh - vv/) images of L- and P-band data are considered for classification in the study area in Jeju Island, South Korea. The properties of the transformed data reveal that the images tend to be Gaussian and they are mutually uncorrelated. The GMRF model therefore can be applied to the classification of the transformed polarimetric SAR data. As the GMRF model is a type of classifier based on segment merging, the classification process begins from the initial guess consisting of large amounts of segments. Spatially and statistically similar regions are combined to update the segmented map for each iteration. The final classification map based on polarimetric characteristics shows improvements in the accuracy and efficiency of the classification frame for the tested polarimetric SAR data.
机译:本文的目的是证明高斯马尔可夫随机场(GMRF)模型可以成功地应用于多频极化SAR数据的分类。作为MRF的特例,已显示GMRF是来自单波段纹理图像或多波段纹理图像的精确紧凑表示。为了将该方法应用于通道间相关极化SAR数据的分类,我们首先将数据转换为不相关主成分图像的组合。 L波段和P波段数据的强度图像(hh,hv和vv)和相位差图像(/ spl phi // sub hh-vv /)均考虑在韩国济州岛的研究区域中进行分类。转换后的数据的性质表明,图像倾向于是高斯图像,并且它们是相互不相关的。因此,GMRF模型可以应用于转换后的极化SAR数据的分类。由于GMRF模型是一种基于段合并的分类器,因此分类过程从包含大量段的初始猜测开始。将空间和统计上相似的区域组合起来,以为每次迭代更新分割后的地图。基于极化特征的最终分类图显示了针对测试的极化SAR数据的分类框架的准确性和效率的提高。

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