基于SAR特征模糊最接近均值重新聚类的城市和城郊土地覆盖分类

B. Aiazzi, L. Alparone, S. Baronti
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引用次数: 4

摘要

本文提出了一种基于模糊推理概念的、适用于监督或无监督土地利用分类的非参数算法,该算法从SAR观测得到的像元特征出发。在一个或多个波段和/或极化中,由后向散射系数计算的特征构成的像素向量被聚类。在每个迭代步骤中,场景中的像素根据与每个聚类的质心代表的加权欧几里德距离获得的最小值进行分类。质心的升级从之前得到的分类图中迭代得到,并通过阈值化像素向量对每个聚类的隶属函数得到。这样的函数是基于结果簇的熵最大化而导出的。为了获得与像素向量的加权距离,其特征通过逐步细化的系数进行加权,其计算仍然依赖于通过最小二乘算法的隶属函数。引入了特征相关权重的改进来优化单个类。可能的“先验”知识来自基础的真实数据可以用来初始化过程,但不是必需的。对帕维亚市及其周边地区的SIR-C SAR数据进行的实验结果表明,与EnviSat常规提供的SAR观测数据类似,非参数分类在区分土地利用,特别是城市和建成区方面是有用的。训练集,即使是非常小的规模,也可以被利用。然而,它的知识只影响初始化,对于迭代的细化过程是不必要的。在没有任何后处理的情况下,基于像素的分类准确率接近70%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Land cover classification of urban and sub-urban areas via fuzzy nearest-mean reclustering of SAR features
This paper describes a nonparametric algorithm based on fuzzy-reasoning concepts and suitable for land use classification, either supervised or unsupervised, starting from pixel features derived from SAR observations. Pixel vectors constituted by features calculated from the backscattering coefficients) in one or more bands and/or polarizations are clustered. At each iteration step, pixels in the scene are classified based on the minimum attained by a weighted Euclidean distance from the centroid representative of each cluster. Upgrade of centroids is iteratively obtained both from the previously obtained classification map and by thresholding a membership function of pixel vectors to each cluster. Such a function has been derived based on entropy maximization of the resulting clusters. To yield the weighted distances from a pixel vector, its features are weighted by means of progressively refined coefficients, whose calculation still relies on the membership function through a least squares algorithm. Refinements of the feature-dependent weights are introduced to optimize individual classes. Possible "a priori" knowledge coming from ground truth data may be used to initialize the procedure, but is not required. Experimental results carried out on SIR-C SAR data of the city of Pavia and its surroundings demonstrate the usefulness of a nonparametric classification to discriminate land use in general, and urban and built-up areas in particular, from SAR observations analogous to those which are routinely available from EnviSat. A training set, even of very small size, may be utilized. However, its knowledge affects initialization only and is unnecessary for the iterative refinement procedure. Pixel-based classification attains almost 70% accuracy without any postprocessing.
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