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The Clustering of High Resolution Remote Sensing Imagery

机译:高分辨率遥感影像的聚类

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摘要

The development of the remotely sensed techniques enlarges the applications of the remote sensing imagery. The clustering of high resolution imagery is difficult, due to the fact that the minor objects, such as roads, make the appearance of the same category region non-uniform. This paper proposes a new approach to cluster high resolution remote sensing imagery. The new clustering approach includes three steps as the following: Firstly, eliminate the minor components in the moving windows. Secondly, compute the image features, such as the energy, some high order cumulants and central moments of pixels' values in moving windows. Lastly, apply the BPC neural network, which is combined by a Back-Propagation (BP) neural network and a Competive neural network, to cluster images according to the image features. Two methods, minimum distance method and the K -means method, are compared with the new clustering approach, proposed by this paper, by using SPOT images for clustering residential areas and agricultural areas in the suburbs of Beijing. The experimental results show that the new clustering approach has the higher clustering accuracy.
机译:遥感技术的发展扩大了遥感影像的应用范围。由于诸如道路之类的次要物体会使同一类别区域的外观不均匀,因此很难对高分辨率图像进行聚类。本文提出了一种对高分辨率遥感影像进行聚类的新方法。新的群集方法包括以下三个步骤:首先,消除移动窗口中的次要组件。其次,计算图像特征,例如能量,一些高阶累积量和移动窗口中像素值的中心矩。最后,将BPC神经网络(由反向传播(BP)神经网络和竞争性神经网络组合在一起)根据图像特征对图像进行聚类。利用SPOT图像对北京郊区居民区和农业区进行聚类,将最小距离法和K均值法与本文提出的新聚类方法进行了比较。实验结果表明,新的聚类方法具有较高的聚类精度。

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