Classification of polarimetric synthetic aperture radar images using fuzzy clustering

P. Kersten, J. Lee, T. Ainsworth, M. Grunes
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引用次数: 2

Abstract

Clustering is a well known technique for classification in polarimetric synthetic aperture radar (POLSAR) images. Pixels are represented as complex covariance matrices, which demand dissimilarity measures that can capture the phase relationships between the polar components of the returns. Four dissimilarity measures are compared to judge their efficacy to separate complex covariances within the fuzzy clustering process. When these four measures are used to classify, a POLSAR image, the measures that are based upon the Wishart distribution outperform the standard metrics because they better represent the total information contained in the polarimetric data. The Expectation Maximization (EM) algorithm is applied to a mixture of complex Wishart distributions to classify the image. Its performance matches the FCM clustering results yielding a tentative conclusion that the Wishart distribution model is more important than the clustering mechanism itself.
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基于模糊聚类的极化合成孔径雷达图像分类
聚类是偏振合成孔径雷达(POLSAR)图像分类的一种常用方法。像素被表示为复杂的协方差矩阵,这需要不同的度量,可以捕获返回的极性分量之间的相位关系。在模糊聚类过程中,比较了四种不同度量来判断其分离复杂协方差的效果。当使用这四种度量来对POLSAR图像进行分类时,基于Wishart分布的度量优于标准度量,因为它们更好地代表了极化数据中包含的全部信息。将期望最大化(EM)算法应用于混合复杂Wishart分布的图像分类。其性能与FCM聚类结果吻合,初步得出Wishart分布模型比聚类机制本身更重要的结论。
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