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Empirical Research on Cluster Analysis of Spectral Information of Hyperspectral Remote Sensing Data

机译:高光谱遥感数据光谱信息集群分析的实证研究

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摘要

The most notable features of hyperspectral remote sensing data are high spectral resolution and high dimensionality. Analyzing the spectral information of the data with clustering requires proper spectral measurements. And clustering results validating methods satisfy high-dimensional data are required. In this paper, three clustering algorithms of K-means, K-means++, and Chameleon were used in the empirical research, based on the famous data set of IndianPine. In the experiments, four spectral measures of SBD, SID, SSD and SPM were used as spectral similarity measures, and S_Dbw was chosen as clustering validating method. As S_Dbw is a relative validating index, the algorithms with different parameter combinations had been experimented many times, verified the effectiveness of the solution composed with selected clustering methods, spectral measures, and clustering validating method. Experimental results showed that hyperspectral information enhanced the ability to distinguish ground objects; Chameleon's performance was best, and S_Dbw could effectively analyze hyperspectral data; the performance of the spectral measurements showed a certain correlation with the clustering method.
机译:高光谱遥感数据的最显着的特点是高的光谱分辨率和高维数。分析与聚类数据的光谱信息需要适当的光谱测量。和聚类结果验证方法能满足要求高维数据。在本文中,的K均值,K均值++,和变色龙3种聚类算法在实证研究中使用的基础上,IndianPine著名数据集。在实验中,SBD,SID,SSD和SPM的4项频谱措施被用作频谱相似的措施,和S_Dbw被选为聚类验证方法。作为S_Dbw是一个相对的验证指数,具有不同的参数组合的算法已经试验了很多次,验证与选定的聚类方法,光谱测量,并且聚类验证方法组成的溶液的有效性。实验结果表明增强的辨别地面物体的能力即高光谱信息;变色龙的表现是最好的,S_Dbw可以有效地分析高光谱数据;光谱测量的性能显示出与聚类方法有一定的相关性。

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