Improvement of building extraction using decision fusion of locally and globally enhanced IKONOS images

S. Mirhassani, B. Yousefi, M. Bahadorian, H. T. Shandiz
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引用次数: 3

Abstract

In this paper a fully automated algorithm for building extraction from remote sensing IKONOS images is presented. Local and global enhancement of an original image improves the rate of building detection in some cases. However, some undesirable effects could occur due to image enhancement. As a result the Bayesian classification method which has been previously used could result in errors. To deal with such problems, decision fusion is used together with a shadow-based verification step to achieve a better result from locally and globally enhanced classified images. Experimental results justify the efficiency of the proposed method in dealing with the problem of building extraction in IKONOS images.
基于局部和全局增强IKONOS图像决策融合的建筑物提取改进
本文提出了一种从IKONOS遥感影像中提取建筑物的全自动算法。在某些情况下,对原始图像进行局部和全局增强可以提高建筑物的检测率。但是,由于图像增强,可能会出现一些不良影响。因此,以前使用的贝叶斯分类方法可能会导致错误。为了解决这些问题,将决策融合与基于阴影的验证步骤结合使用,以获得局部增强和全局增强分类图像的更好结果。实验结果证明了该方法在处理IKONOS图像中的建筑物提取问题上的有效性。
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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