基于目标融合的高空间分辨率图像分类方法

P. S. Huang, T. Tu
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引用次数: 15

摘要

从高空间分辨率影像中提取GIS特征是遥感应用中的一项重要任务。然而,传统的基于像素的分类方法是在10-100 m地面像素图像时代发展起来的,无法利用IKONOS和QuickBird提供的新图像的优势。为了从高分辨率图像中成功提取各种土地覆盖,本文提出了一种目标聚类融合(TCF)系统。传统的分类方法通常会产生像盐和胡椒一样的结果,相比之下,所提出的TCF系统可以保留每个分类目标与其邻居相关的详细空间信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A target fusion-based approach for classifying high spatial resolution imagery
To extract GIS features from high spatial resolution imagery is an important task in remote sensing applications. However, traditional pixel-based classification methods, which were developed in the era of 10-100 m ground pixel size imagery, cannot exploit the advantages of new images provided by IKONOS and QuickBird. To successfully extract various land covers from high resolution imagery, a Target-Clustering Fusion (TCF) system is presented in this work. Compared to the conventional classification methods that typically produce more salt-and-pepper-like results, the proposed TCF system can preserve detailed spatial information on each classified target related to its neighbors.
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