Affinity propagation for unsupervised classification of remotely sensed images

A. Tahraoui, R. Khedam, A. Bouakache, A. B. Aissa
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引用次数: 1

Abstract

The aim of this paper is to present a new unsupervised classification method for satellite multispectral images based on affinity propagation (AP) algorithm. Recently proposed, affinity propagation becomes the most widely methods for data clustering. This technique is essentially based on passing of messages between pixels to be automatically classified without any a priori knowledge about the number of classes. Its main advantage is that initially all pixels to classify are considered as centroids or “exemplars”. However, the AP method has two major drawbacks: 1) when it comes to partition multispectral images of high spatial size, complexity of computation becomes quadratic 2) it gives an overestimation of class number due to its great sensitivity to very small variations in the image. In this work, we present the AP algorithm in its original version and we have proposed an iterative AP-block procedure to address the two issues mentioned above. Both versions have been applied to classify a low spatial resolution image acquired by ETM+ sensor of american satellite LandSat-7. From obtained results, it is concluded that the proposed AP-block classifier is more appropriate and more efficient to unsupervised image classification than the classical AP algorithm.
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基于亲和传播的遥感图像无监督分类
提出了一种基于亲和传播(AP)算法的卫星多光谱图像无监督分类方法。近年来,亲和性传播成为应用最广泛的数据聚类方法。这种技术本质上是基于要自动分类的像素之间的消息传递,而不需要任何关于类数量的先验知识。它的主要优点是,最初所有要分类的像素都被认为是质心或“样本”。然而,AP方法有两个主要的缺点:1)当涉及到高空间大小的多光谱图像分割时,计算复杂度变成了二次元;2)由于对图像中非常小的变化非常敏感,它给出了类数的过高估计。在这项工作中,我们提出了原始版本的AP算法,并提出了一个迭代的AP块程序来解决上述两个问题。应用这两个版本对美国LandSat-7卫星ETM+传感器获取的低空间分辨率图像进行了分类。结果表明,本文提出的AP块分类器比经典的AP算法更适合于无监督图像分类。
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