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A novel hierarchical clustering technique based on splitting and merging

机译:一种基于拆分合并的层次聚类新技术

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摘要

Amongst the multiple benefits and uses of remote sensing, one of the most important applications is to solve the problem of land-cover mapping. In this paper, unsupervised techniques are considered for land-cover mapping using multispectral satellite images. In unsupervised techniques, automatic generation of the number of clusters for huge databases has not been exploited to its full potential. To overcome that, a hierarchical clustering algorithm that uses splitting and merging techniques is proposed here. In the proposed method, a splitting method is initially used to search for the best possible number of clusters with a non-parametric estimation technique, i.e., mean shift clustering (MSC). For the obtained clusters, a merging method is used to group the data points based on a parametric method (k-means clustering algorithm). The performance of the proposed hierarchical clustering algorithm is compared with three previously proposed unsupervised algorithms, i.e., (1) parametric k-means clustering; (2) hybrid MSC and k-means clustering; (3) hybrid algorithm for cluster establishment (ACE) and k-means clustering. Two typical multispectral satellite images - a Landsat 7 thematic mapper image and a QuickBird image are used to demonstrate the performance of the proposed hierarchical clustering algorithm. A performance comparison of this proposed algorithm with the previously proposed algorithms is presented. From the obtained results, it is concluded that the proposed hierarchical clustering algorithm is both more accurate and more robust than the other compared algorithms.
机译:在遥感的多种好处和用途中,最重要的应用之一是解决土地覆盖制图的问题。在本文中,考虑采用无监督技术进行多光谱卫星图像的土地覆盖制图。在无人监督的技术中,尚未为大型数据库自动生成簇数的潜力。为了克服这一点,在此提出了一种使用拆分和合并技术的分层聚类算法。在提出的方法中,最初使用分裂方法通过非参数估计技术即均值漂移聚类(MSC)来搜索聚类的最佳数量。对于获得的群集,基于参数方法(k均值群集算法),使用合并方法对数据点进行分组。将提出的分层聚类算法的性能与之前提出的三种无监督算法进行比较,即(1)参数k均值聚类; (2)混合MSC和k-means聚类; (3)聚类建立(ACE)和k均值聚类的混合算法。两个典型的多光谱卫星图像-Landsat 7主题映射器图像和QuickBird图像用于演示所提出的分层聚类算法的性能。提出了该提议算法与先前提议算法的性能比较。从获得的结果可以得出结论,提出的分层聚类算法比其他比较算法更准确,更健壮。

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