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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Automatic histogram-based fuzzy C-means clustering for remote sensing imagery
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Automatic histogram-based fuzzy C-means clustering for remote sensing imagery

机译:基于直方图的自动模糊C均值聚类用于遥感影像

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摘要

Fuzzy C-means (FCM) clustering has been widely used in analyzing and understanding remote sensing images. However, the conventional FCM algorithm is sensitive to initialization, and it requires estimations from expert users to determine the number of clusters. To overcome the limitations of the FCM algorithm, an automatic histogram-based fuzzy C-means (AHFCM) algorithm is presented in this paper. Our proposed algorithm has two primary steps: 1 - clustering each band of a multispectral image by calculating the slope for each point of the histogram, in two directions, and executing the FCM clustering algorithm based on specific rules, and 2 - automatic fusion of labeled images is used to initialize and determine the number of clusters in the FCM algorithm for automatic multispectral image clustering. The performance of our proposed algorithm is first tested on clustering a very high resolution aerial image for various numbers of clusters and, next, on clustering two very high resolution aerial images, a high resolution Worldview2 satellite image, a Landsat8 satellite image and an EO-1 hyperspectral image, for a constant number of clusters. The superiority of the new method is demonstrated by comparing it with the well-known methods of FCM, K-means, fast global FCM (FGFCM) and kernelized fast global FCM (KFGFCM) clustering algorithms, both quantitatively by calculating the DB, XB and SC indices and qualitatively by visualizing the cluster results.
机译:模糊C均值(FCM)聚类已广泛用于分析和理解遥感影像。但是,传统的FCM算法对初始化很敏感,并且需要专家用户的估计才能确定簇的数量。为了克服FCM算法的局限性,提出了一种基于直方图的模糊C均值自动算法。我们提出的算法有两个主要步骤:1-通过计算两个方向上直方图每个点的斜率对多光谱图像的每个波段进行聚类,并根据特定规则执行FCM聚类算法,以及2-自动标记的融合图像用于初始化和确定FCM算法中用于自动多光谱图像聚类的聚类数目。我们的算法的性能首先在以下方面进行了测试:将非常高分辨率的航空图像聚类为各种数量的聚类,然后对两个非常高分辨率的航空图像进行聚类,分别是高分辨率的Worldview2卫星图像,Landsat8卫星图像和EO- 1个高光谱图像,用于恒定数目的聚类。通过将新方法与FCM,K-means,快速全局FCM(FGFCM)和内核化快速全局FCM(KFGFCM)聚类算法进行比较(通过计算DB,XB和SC通过可视化聚类结果定性和定性。

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