利用空间增强高光谱图像绘制布鲁塞尔首都地区土地覆盖

J. Chan, N. Yokoya
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引用次数: 1

摘要

高光谱数据为环境监测提供了不可或缺的及时信息。它已成为许多特定应用中最受追捧的数据集之一。然而,对于大面积覆盖,星载高光谱数据目前以低分辨率获取。由于高光谱数据的实用性及其在新应用中的潜力,许多研究人员研究了对地观测高光谱图像的新增强方法。我们研究了四种不同的增强方法,使用中等难度的分类方案。所研究的两种方法是泛锐化方法,另外两种是子空间方法。结果显示,除了松树的分类,使用空间增强图像的分类没有改善。然而,使用完整的道路和建筑物的地面真相,很明显,空间增强的高光谱图像在分类小型房屋方面取得了实质性的进步。可以更好地可视化道路网络的特征,也可以观察到更高的准确性,但在一定程度上不如建筑物。四种方法中,磨刀法效果最好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping land covers of brussels capital region using spatially enhanced hyperspectral images
Hyperspectral data provide indispensable timely information for environmental monitoring. It has become one of the most sought after data set for many specific applications. However, for large areal coverage, spaceborne hyperspectral data are currently acquired at low resolution. Due to the proven usefulness of hyperspectral data and its potential in newer applications, many researchers have investigated novel enhancement methods for Earth Observation hyperspectral images. We have examined four different enhancement methods using a classification scheme at medium level of difficulty. Two of the examined methods are pansharpening methods and the other two are sub-space methods. The results do not show improvements in classification using spatially enhanced images except for the class of Pine trees. However, using full groundtruth of road and buildings, it is clear that spatially enhanced hyperspectral images achieve substantial improvement in classifying small sized houses. Better characterization of road networks can be visualized and also higher accuracy is observed but to a lesser extent than buildings. Among the four methods, a pansharpening method performed best.
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