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Multiple kernel approach to semi-supervised fuzzy clustering algorithm for land-cover classification

机译:土地覆盖分类的半监督模糊聚类算法的多核方法

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摘要

Clustering is used to detect sound structures or patterns in a dataset in which objects positioned within the same cluster exhibit a substantial level of similarity. In numerous clustering problems, patterns is not easily separable due to the highly complex shaped data. In the previous studies, kernel-based methods have exhibited the effectiveness to partition such data. In this paper, we proposed a semi-supervised clustering method based fuzzy c-means algorithm using multiple kernel technique, called SMKFCM, in which the rudimentary centroids are directly used to the calculating process of centroids. The SMKFCM algorithm is on the basis of combining the labeled and unlabeled data together to improve performance. We used the labeled patterns to calculate the centrality of clusters considered as the rudimentary centroids which are added into the objective functions. The SMKFCM algorithm can be applied to both clustering and classification problems. The experimental results show that SMKFCM algorithm can improve significantly the classification accuracy which comes from comparison with a conventional classification or clustering algorithms such as semi-supervised kernel fuzzy c-means (S2KFCM), semi-supervised fuzzy c-means (SFCM) and Self-trained semi-supervised SVM algorithm (PS3VM).
机译:聚类用于检测数据集中的声音结构或模式,其中位于同一聚类内的对象表现出相当大的相似度。在许多聚类问题中,由于形状数据非常复杂,因此模式不容易分离。在以前的研究中,基于内核的方法已显示出对此类数据进行分区的有效性。在本文中,我们提出了一种基于多核技术的基于模糊c均值的半监督聚类方法,称为SMKFCM,其中基本质心直接用于质心的计算过程。 SMKFCM算法基于将标记和未标记数据组合在一起以提高性能的基础。我们使用标记的模式来计算被视为基本质心的聚类的中心性,这些质心被添加到目标函数中。 SMKFCM算法可以应用于聚类和分类问题。实验结果表明,与传统分类或聚类算法相比,SMKFCM算法可以显着提高分类精度,例如半监督核模糊c均值(S2KFCM),半监督模糊c均值(SFCM)和Self训练的半监督SVM算法(PS3VM)。

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