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Optimal fusion of optical and SAR high-resolution images for semiautomatic building detection

机译:光学和SAR高分辨率图像的最佳融合,可用于半自动建筑物检测

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摘要

Building detection from different high-resolution aerial and satellite images has been a notable research topic in recent decades. The primary challenges are occlusions, shadows, different roof types, and similar spectral behavior of urban covers. Integration of different data sources is a solution to supplement the input feature space and improve the existing algorithms. Regarding the different nature and unique characteristics of optical and radar images, there are motivations for their fusion. This paper is aimed to identify an optimal fusion of radar and optical images to overcome their individual shortcomings and weaknesses. For this reason, panchromatic, multispectral, and radar images were first classified individually, and their strengths and weaknesses were evaluated. Different feature-level fusions of these data sets were then assessed followed by a decision-level fusion of their results. In both the feature and decision levels of integration, artificial neural networks were applied as the classifiers. Several post-processing methods using normalized different vegetation index, majority filter, and area filter were finally applied to the results. Overall accuracy of 92.8% and building detection accuracy of 89.1% confirmed the ability of the proposed fusion strategy of optical and radar images for building detection purposes.
机译:近几十年来,从不同的高分辨率航空和卫星图像进行建筑物检测一直是一个值得注意的研究课题。主要挑战是遮挡,阴影,不同的屋顶类型以及类似的城市覆盖光谱行为。集成不同数据源是一种解决方案,可以补充输入特征空间并改进现有算法。关于光学和雷达图像的不同性质和独特特性,存在将它们融合的动机。本文旨在确定雷达和光学图像的最佳融合,以克服它们各自的缺点和不足。因此,首先分别对全色,多光谱和雷达图像进行分类,并评估其优缺点。然后评估这些数据集的不同特征级别融合,然后对其结果进行决策级别融合。在集成的特征和决策级别上,人工神经网络均被用作分类器。最后,使用归一化的不同植被指数,多数滤波和面积滤波的几种后处理方法应用于结果。总体准确度为92.8%,建筑物检测准确度为89.1%,证实了为建筑物检测目的而提出的光学和雷达图像融合策略的能力。

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