基于模糊概率局部聚类的无监督聚类多光谱图像分割

Luis Mantilla, Yessenia Yari
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引用次数: 1

摘要

在模式识别中,有许多算法都试图解决对相同类型的对象进行分组的问题,这被称为聚类,但是划分这些对象的任务不仅在于目标函数,还在于计算对象之间相似度的方法。由于多光谱图像中包含的信息统计分离度低,数据量大,因此需要输入局部信息。本文提出使用高斯色散方程来计算每个样本对所分析样本的贡献。结果表明,在聚类模型中对局部权值进行积分,可以减少生成的每一组的熵。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multispectral images segmentation using fuzzy probabilistic local cluster for unsupervised clustering
In Pattern Recognition there are many algorithms it try to solve the problem of grouping objects of the same type, this is called clustering, however the task of dividing these lies not only in the objective function, but also the methodology used to calculate the similarity between objects. Because multispectral images contain information that has low statistical separation and a large amount of data it is necessary to enter local information. In this paper, the use of the Gaussian dispersion equation is proposed in order to calculate the contribution of each sample to the sample analyzed. The results show that the integration of local weights within the clustering model decreases the entropy of each group generated.
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