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A Two-pass Unsupervised Clustering Algorithm for Polarimetric SAR Image Segmentation

机译:Polarimetric SAR图像分割的双通无监督聚类算法

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This paper proposes a two-pass clustering algorithm with a combination of the linear assignment and fuzzy C-means methods (FCM) for polarimetric SAR (PolSAR) image segmentation. To avoid the inconsistency of clustering results from the fuzzy C-means method with random initialization, the linear assignment method with the least similar cluster representatives is applied first to generate initial clusters, and then followed with the FCM method. Appropriate initial clustering centres adjacent to the actual final clustering centres can be found to promote the convergence speed of the overall iterative process and drastically reduce the calculation time. Otherwise, the modified algorithm is updated from multidimensional data analysis to PolSAR image clustering. This approach is applied to four well-known practical UCI datasets and public PolSAR image segmentation. The results are compared with those from the fuzzy C-means method with other initialization methods. It is shown that the two pass approach consistently results in the best clustering results. The application results on PolSAR image segmentation are also demonstrated.
机译:本文提出了一种双通聚类算法,具有用于偏振SAR(POLSAR)图像分割的线性分配和模糊C型方法(FCM)的组合。为避免具有随机初始化的模糊C均值方法的聚类结果的不一致,首先应用具有最不相似的群集代表的线性分配方法以生成初始群集,然后用FCM方法跟踪。可以发现与实际最终聚类中心相邻的适当初始聚类中心促进整体迭代过程的收敛速度,并大大降低计算时间。否则,将修改的算法从多维数据分析更新为Polsar图像聚类。这种方法适用于四个公知的实用UCI数据集和公共POLSAR图像分割。将结果与来自其他初始化方法的模糊C型方法的结果进行比较。结果表明,两次通过方法始终如一地导致最佳聚类结果。还证明了Polsar图像分割的应用结果。

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