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Similarity measure of spectral vectors based on set theory and its application in hyperspectral RS image retrieval

机译:基于集理论的光谱矢量相似度度量及其在高光谱遥感影像检索中的应用

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摘要

In this paper, two new similarity measure methods based on set theory were proposed. Firstly, similarity measure of two sets based on set theory and set operation was discussed. This principle was used to spectral vectors, and two approaches were proposed. The first method was to create a spectral polygon corresponding to spectral curve, and similarity of two spectral vectors can be replaced by that of two polygons. Area of spectral polygon was used as quantification function and some effective indexes for similarity and dissimilarity were computed. The second method was to transform the original spectral vector to encoding vector according to absorption or reflectance feature bands, and similarity measure was conducted to encoding vectors. It proved that the spectral polygon-based approach was effective and can be used to hyperspectral RS image retrieval.
机译:本文提出了两种基于集合论的相似度度量方法。首先,讨论了基于集合理论和集合运算的两个集合的相似性度量。该原理被用于频谱矢量,并提出了两种方法。第一种方法是创建与光谱曲线相对应的光谱多边形,并且可以用两个多边形的相似性替换两个光谱向量的相似性。光谱多边形的面积被用作量化函数,并计算了一些相似和不相似的有效指标。第二种方法是根据吸收或反射特征带将原始光谱向量转换为编码向量,并对编码向量进行相似性度量。证明了基于光谱多边形的方法是有效的,可用于高光谱RS图像检索。

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