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On Clustering Performance Indices for Multispectral Images

机译:多光谱图像聚类性能指标研究

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摘要

Clustering of multispectral image pixels can be a exploratory tool to analyze the contents of the image in the absence of ground truth information. The validity of the clustering algorithms can be quantified computing several performance indices. Each performance index enhances some statistical property of the obtained data partitions. Performance indices are not equivalent, and they can even lead to quite different conclusions from the same data partitions. To show this, we have applied two well known clustering algorithms (K-means, Fuzzy c-means) and some supervised classification algorithms to a well known multispectral image. We compare the ground truth partition with the ones found by the clustering and supervised algorithms The values of the diverse performance indices over the same partitions vary and can lead to quite different conclusions.
机译:多光谱图像像素的聚类可以是在没有地面真实信息的情况下分析图像内容的探索工具。聚类算法的有效性可以通过计算几个性能指标来量化。每个性能指标都增强了获得的数据分区的某些统计属性。性能指标不相等,它们甚至可能从相同的数据分区得出截然不同的结论。为了说明这一点,我们对著名的多光谱图像应用了两种众所周知的聚类算法(K均值,模糊c均值)和一些监督分类算法。我们将地面真值分区与通过聚类和监督算法发现的分区进行比较。在相同分区上,不同性能指标的值会有所不同,并可能得出截然不同的结论。

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