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基于四分量散射模型的多极化SAR图像分类
引用本文:张海剑,杨文,邹同元,孙洪.基于四分量散射模型的多极化SAR图像分类[J].武汉大学学报(信息科学版),2009,34(1).
作者姓名:张海剑  杨文  邹同元  孙洪
作者单位:武汉大学电子信息工程学院
基金项目:武汉大学测绘遥感信息工程国家重点实验窒开放研究基金,湖北省自然科学基金 
摘    要:基于四分量散射模型提出了一种多极化SAR(synthetic aperture radar)图像非监督分类算法。与Freeman三分量散射模型不同,四分量散射模型在Freeman三分量的基础上增加了螺旋散射分量(helix),该分量反映了复杂地貌和不规则城市建筑的散射机理,可以用来处理复杂的场景图像。算法强调了初始分类的重要性,在初始分类中考虑了混合散射机制像素的存在,从而提高了分类结果的精确度。聚类过程中,采用由四个散射分量组成的特征向量进行迭代聚类。为了实现算法的完全非监督,利用特征向量给出了一种新的聚类终止准则。NASA/JPL实验室AIRSAR全极化数据分类实验结果表明,该算法具有较好的分类效果,并获得了较高的分类精度。

关 键 词:多极化合成孔径雷达  四分量分解  非监督分类

Classification of Polarimetric SAR Image Based on Four-component Scattering Model
ZHANG Haijian,YANG Wen,ZOU Tongyuan,SUN Hong.Classification of Polarimetric SAR Image Based on Four-component Scattering Model[J].Geomatics and Information Science of Wuhan University,2009,34(1).
Authors:ZHANG Haijian  YANG Wen  ZOU Tongyuan  SUN Hong
Abstract:An improved classification algorithm is proposed to deal with polarimetric synthetic aperture radar(POLSAR) images.This algorithm is based on a four-component scattering model,compared to the three-component(surface,double-bounce and volume) model introduced by Freeman and Durden,the four-component scattering model introduces the helix scattering as its fourth component,which can describe complex terrains and man-made targets in urban areas;so the four-component scattering model can deal with general scattering cases.In addition,this algorithm emphasizes the existence of pixels with mixed scattering mechanism,and applies the result of the four-component decomposition as feature vector to initial merging and the final iterative classifier.We use L-band AIRSAR data to demonstrate this improved method;and the experimental result verifies the effectiveness of this improved algorithm.
Keywords:polarimetric synthetic aperture radar  four-component decomposition  unsupervised classification
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