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An interval number distance- and ranking-based method for remotely sensed image fuzzy clustering

机译:基于区间数距离和等级的遥感图像模糊聚类方法

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摘要

Fuzzy c-means clustering is an important non-supervised classification method for remote-sensing images and is based on type-1 fuzzy set theory. Type-1 fuzzy sets use singleton values to express the membership grade; therefore, such sets cannot describe the uncertainty of the membership grade. Interval type-2 fuzzy c-means (IT2FCM) clustering and relevant methods are based on interval type-2 fuzzy sets. Real vectors are used to describe the clustering centres, and the average values of the upper and lower membership grades are used to determine the classification of each pixel. Thus, the width information for interval clustering centres and interval membership grades are ignored. The main contribution of this article is to propose an improved IT2FCM* algorithm by adopting interval number distance (IND) and ranking methods, which use the width information of interval clustering centres and interval membership grades, thus distinguishing this method from existing fuzzy clustering methods. Three different IND definitions are tested, and the distance definition proposed by Li shows the best performance. The second contribution of this work is that two fuzzy cluster validity indices, FS- and XB-, are improved using the IND. Three types of multi/hyperspectral remote-sensing data sets are used to test this algorithm, and the experimental results show that the IT2FCM* algorithm based on the IND proposed by Li performs better than the IT2FCM algorithm using four cluster validity indices, the confusion matrix, and the kappa coefficient (kappa). Additionally, the improved FS- index has more indicative ability than the original FS- index.
机译:模糊c均值聚类是一种重要的遥感图像非监督分类方法,它基于1类模糊集理论。类型1模糊集使用单例值来表示隶属度。因此,这样的集合不能描述会员等级的不确定性。区间2型模糊c均值(IT2FCM)聚类和相关方法基于区间2型模糊集。实向量用于描述聚类中心,上,下隶属度等级的平均值用于确定每个像素的分类。因此,将忽略区间聚类中心和区间成员资格等级的宽度信息。本文的主要贡献是通过采用间隔数距离(IND)和排序方法,提出了一种改进的IT2FCM *算法,该算法利用了间隔聚类中心的宽度信息和间隔成员资格等级,从而将该方法与现有的模糊聚类方法区分开来。测试了三种不同的IND定义,Li提出的距离定义显示了最佳性能。这项工作的第二个贡献是使用IND改进了两个模糊聚类有效性指标FS-和XB-。使用三种类型的多/高光谱遥感数据集对该算法进行了测试,实验结果表明,基于Li的基于IND的IT2FCM *算法的性能优于使用四个聚类有效性指标,混淆矩阵的IT2FCM算法。 ,以及kappa系数(kappa)。另外,改进的FS-指数比原始FS-指数具有更大的指示能力。

著录项

  • 来源
    《International journal of remote sensing》 |2018年第23期|8591-8614|共24页
  • 作者单位

    Tianjin Normal Univ Coll Geog & Environm Sci Tianjin Key Lab Water Resources & Environm Tianjin Peoples R China;

    Chinese Acad Agr Sci Inst Agr Resources & Reg Planning Minist Agr Key Lab Agr Remote Sensing Beijing Peoples R China;

    Cent S Univ Minist Educ Key Lab Metallogen Predict Nonferrous Met Changsha Hunan Peoples R China|Cent S Univ Sch Geosci & Infophys Changsha Hunan Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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