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Automatic and unsupervised building extraction in complex urban environments from multi spectral satellite imagery

机译:在多城市卫星环境中,从复杂的城市环境中自动自动提取建筑物

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This paper presents an approach for building extraction in remotely sensed images composed of low-resolution multi-spectral and high resolution panchromatic bands. The proposed approach exploits spectral properties in conjunction with spatial properties, both of which actually provide complementary information to each other. First, high resolution pan-sharpened color image is obtained via the process of merging high resolution panchromatic and low resolution multispectral imagery yielding a color image at the resolution of panchromatic band. Natural and man-made regions are classified by using Normalized Difference Vegetation Index (NDVI). Then shadow is detected by using chromaticity to intensity ratio in YIQ color space. After the classification of the vegetation and the shadow areas, the rest of the image consists of man-made areas only. Then, the manmade areas are partitioned by mean shift segmentation. However, some resulting segments are irrelevant to buildings in shape. These artifacts are eliminated in two steps: First, each segment is thinned using morphological operations and the length of it is compared to a threshold which is specified according to the empirical length of buildings. As a result, long segments which most probably represent roads are masked out. Second, the erroneous thin artifacts are removed via principle component analysis (PCA). In parallel to PCA, small artifacts are wiped out based on morphological processes also. The resultant manmade mask image is overlaid on the ground truth image, where the buildings are manually labeled, for the assessment of the methodology. The proposed methodology is applied to various Quickbird images. The experiments show that the methodology performs well to extract buildings in complex environments.
机译:本文提出了一种在低分辨率多光谱和高分辨率全色波段组成的遥感图像中进行建筑物提取的方法。所提出的方法利用频谱特性与空间特性相结合,两者实际上相互提供了补充信息。首先,通过合并高分辨率全色和低分辨率多光谱图像的过程获得高分辨率的全色锐化彩色图像,从而产生全色带分辨率的彩色图像。通过使用归一化植被指数(NDVI)对自然和人造区域进行分类。然后通过使用YIQ色彩空间中的色度/强度比来检测阴影。在对植被和阴影区域进行分类之后,图像的其余部分仅由人造区域组成。然后,通过均值移动分割对人造区域进行划分。但是,某些结果片段与建筑物的形状无关。这些伪影可通过两个步骤消除:首先,使用形态学运算对每个片段进行细化,并将其长度与根据建筑物的经验长度指定的阈值进行比较。结果,掩盖了很可能代表道路的长段。其次,通过主成分分析(PCA)去除了错误的稀薄伪影。与PCA并行,还根据形态过程清除了小的伪像。生成的人造蒙版图像叠加在地面真实图像上,在此处手动标记建筑物,以评估方法。所提出的方法应用于各种Quickbird图像。实验表明,该方法在复杂环境中提取建筑物的效果很好。

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