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Building extraction method based on the spectral index for high-resolution remote sensing images over urban areas

机译:基于城市地区高分辨率遥感图像光谱指标的建筑提取方法

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With the advent of high-resolution remote sensing images, automatic building extraction methods play a more important role in rapidly acquiring information about large-scale buildings. Although advanced building extraction methods have been introduced to improve building extraction results, these methods involve complex processing and high-computation times. We put forward an effective method to extract building information, based on a proposed spectral building index. The basic idea of the spectral building index is to generate an optimized index based on the computation and analysis of spectral bands, which are beneficial for image enhancement for buildings in images Aiming at the band number of the multispectral satellite images in high-resolution remote sensing images, we propose two spectral indices for building extraction, including the normalized spectral building index (NSBI) and the difference spectral building index (DSBI). Considering the current spectral band number of high-resolution satellite images, NSBI is suited for satellite images with eight spectral bands, whereas DSBI is suited for satellite images with four spectral bands. The proposed method is validated on various high-resolution images including WorldView-2, GF-1, GF-2, and QuickBird images with 13 experiment datasets, as well as a detailed comparison to the state-of-the-art methods, such as the morphological building index, nonhomogeneous feature difference, and building condition index. The experimental results reveal that the proposed method can achieve promising results for different building conditions, such as regular and irregular building shapes and concrete and metal roofing materials. The average overall accuracy was over 85% with low-time consumption (1 s). (C) 2018 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:随着高分辨率遥感图像的出现,自动建筑提取方法在快速获取有关大型建筑物的信息时发挥更重要的作用。虽然已经引入了先进的建筑提取方法来改善建筑物提取结果,但这些方法涉及复杂的加工和高计算时间。我们提出了一种基于所提出的光谱建筑指数提取建筑信息的有效方法。光谱构建索引的基本思想是基于频谱频带的计算和分析来生成优化的索引,这些频带是有利于用于在高分辨率遥感中的多光谱卫星图像的频带编号的图像中的建筑物的图像增强图像,我们提出了两个用于建筑提取的光谱指标,包括标准化的光谱建筑指数(NSBI)和差异光谱建筑指数(DSBI)。考虑到当前的高分辨率卫星图像的光谱带数,NSBI适用于具有八个光谱带的卫星图像,而DSBI适用于具有四个光谱带的卫星图像。该方法在包括WorldView-2,GF-1,GF-2和具有13个实验数据集的Quickbird图像的各种高分辨率图像上验证,以及与最先进的方法的详细比较作为形态建设指标,非均匀特征差,建设条件指标。实验结果表明,该方法可以达到不同建筑条件的有希望的结果,例如规则和不规则的建筑物形状和混凝土和金属屋顶材料。通过低耗时量(& 1 s),平均总体精度超过85%。 (c)2018年光学仪表工程师协会(SPIE)

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