Comparative Studies on Similarity Distances for Remote Sensing Image Classification

Omid Ghozatlou, M. Datcu
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Abstract

Scene classification is one of the most important tasks in the remote sensing field. In general, remotely sensed data comprises targets of different nature with many detailed classes. Therefore, the classification of patches in a satellite scene is a challenging issue. To address the problem, the preferred alternative is to transform to polar coordinates and analyze angular distances. Prior works have so far considered angular distances between points, while ignoring that the target class is not a point, but a distribution. In this paper, we take advantage of this critical fact by using a point-to-probability distribution measure rather than an $\ell_{n}$ norm. In this paper, two similarity measures (Euclidean and Mahalanobis) in two different feature space are experimentally investigated through some remote sensing datasets.
遥感影像分类相似距离的比较研究
场景分类是遥感领域的重要任务之一。一般来说,遥感数据包括不同性质的目标和许多详细的类别。因此,卫星场景中斑块的分类是一个具有挑战性的问题。为了解决这个问题,首选的替代方法是转换为极坐标并分析角距离。到目前为止,之前的工作考虑了点之间的角距离,而忽略了目标类不是一个点,而是一个分布。在本文中,我们通过使用点到概率分布度量而不是$\ell_{n}$范数来利用这一关键事实。本文通过一些遥感数据集,实验研究了两个不同特征空间中的两种相似性度量(欧几里得和马氏)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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