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A New Approach to Change Vector Analysis Using Distance and Similarity Measures

机译:一种使用距离和相似度度量进行变化向量分析的新方法

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The need to monitor the Earth’s surface over a range of spatial and temporal scales is fundamental in ecosystems planning and management. Change-Vector Analysis (CVA) is a bi-temporal method of change detection that considers the magnitude and direction of change vector. However, many multispectral applications do not make use of the direction component. The procedure most used to calculate the direction component using multiband data is the direction cosine, but the number of output direction cosine images is equal to the number of original bands and has a complex interpretation. This paper proposes a new approach to calculate the spectral direction of change, using the Spectral Angle Mapper and Spectral Correlation Mapper spectral-similarity measures. The chief advantage of this approach is that it generates a single image of change information insensitive to illumination variation. In this paper the magnitude component of the spectral similarity was calculated in two ways: as the standard Euclidean distance and as the Mahalanobis distance. In this test the best magnitude measure was the Euclidean distance and the best similarity measure was Spectral Angle Mapper. The results show that the distance and similarity measures are complementary and need to be applied together.
机译:在一系列的空间和时间尺度上监测地球表面的需求是生态系统规划和管理的根本。变更向量分析(CVA)是一种双向检测变更的方法,它考虑了变更向量的大小和方向。但是,许多多光谱应用程序没有利用方向分量。使用多波段数据最常用于计算方向分量的过程是方向余弦,但是输出方向余弦图像的数量等于原始波段的数量,并且解释复杂。本文提出了一种使用谱角映射器和谱相关映射器的谱相似度度量来计算谱变化方向的新方法。这种方法的主要优点是它生成对照明变化不敏感的变化信息的单个图像。在本文中,光谱相似度的幅度分量有两种计算方法:标准欧几里得距离和马氏距离。在该测试中,最佳幅度度量是欧几里得距离,最佳相似度量是光谱角映射器。结果表明,距离和相似性度量是互补的,需要一起应用。

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