基于典型分析的多光谱图像中光谱目标分割

J. Lira, A. Rodríguez
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引用次数: 0

摘要

遥感中的一系列问题都需要对水体、盐碱地或农田等特定的光谱对象进行分割。从多光谱图像对这些物体进行进一步分析,可能包括计算光学反射率变量,如叶绿素浓度、反照率或植被湿度。为了对这些变量进行可靠的测量,需要对光谱目标进行精确的分割。在这项工作中,我们提出了一种基于典型分析和分裂合并聚类算法的光谱目标分割新方法。提供了三个例子来证明该方法的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of spectral objects from multi-spectral images using canonical analysis
A series of problems in remote sensing require the segmentation of specific spectral objects such as water bodies, saline soils or agricultural fields. Further analysis of these objects, from multi-spectral images, may include the calculation of optical reflectance variables such as chlorophyll concentration, albedo or vegetation humidity. To derive reliable measurements of these variables a precise segmentation - from the rest of image - of the spectral objects is needed. In this work we propose a new methodology to segment spectral objects based on canonical analysis and a split-and-merge clustering algorithm. Three examples are provided to demonstrate the goodness of the methodology.
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