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Combination of fuzzy clustering algorithms for change detection in remote sensing images

机译:结合模糊聚类算法进行遥感图像变化检测

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摘要

Here we propose a methodology to combine the output of fuzzy clusterings to detect changes in remote sensing images. In this regard we select two fuzzy clustering algorithms, namely fuzzy c-means (FCM) and Gustafson Kessel clustering (GKC). For clustering purpose various image features are extracted using the neighborhood information of pixels from the difference image (DI). To assign a pixel-pattern to either of the two groups (for changed and unchanged regions of the DI) maximum of the two membership-values (given by FCM and by GKC for the same pattern for the same cluster) is considered. It has been observed experimentally that the changesare detected more efficiently using the proposed ensemble-based procedure. To show the effectiveness of the proposed technique, experiments are conducted on two multispectral and multitemporal remote sensing images. Results are compared with those of existing stand-alone fuzzy clustering based techniques, Markov random field (MRF) & neural network based algorithms and found to be superior.
机译:在这里,我们提出了一种方法,可以结合模糊聚类的输出来检测遥感图像中的变化。在这方面,我们选择两种模糊聚类算法,即模糊c均值(FCM)和Gustafson Kessel聚类(GKC)。出于聚类目的,使用像素的邻近信息从差异图像(DI)中提取各种图像特征。为了将像素图案分配给两个组中的任何一个(对于DI的变化区域和未改变区域),必须考虑两个隶属度值的最大值(对于同一簇,对于相同图案,由FCM和GKC给出)。实验已经观察到,使用建议的基于集成的过程可以更有效地检测到这些变化。为了显示所提出技术的有效性,对两个多光谱和多时间遥感图像进行了实验。将结果与现有的基于独立模糊聚类的技术,基于马尔可夫随机场(MRF)和基于神经网络的算法的结果进行比较,发现效果更好。

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