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A Region-Based Approach to Building Detection in Densely Build-Up High Resolution Satellite Image

机译:基于地区的建筑物检测方法,在密集地积聚高分辨率卫星图像中

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We propose a novel region-based approach for building detection in high-resolution satellite image with densely build-up buildings. In our method, first the prior building model is constructed with texture and shape features from training building set. After over-segmentation of input image into many small regions, we identify regions which have a similar pattern with prior building model. These regions are called building like regions (BLRs). Then we group BLRs to get candidate building regions (CBRs), which have similar shape with prior building model. Next, lines which have strong relationship with each CBR are extracted. From these lines and CBR boundaries, 2-D rooftop hypotheses are generated. At last, shadows and geometrical rules are used to verify the hypotheses. Experimental results are shown on area with hundreds of buildings
机译:我们提出了一种新的基于地区的基于地区的卫星图像在高分辨率卫星图像中进行了密集建筑物。 在我们的方法中,首先,先前的建筑模型由培训建筑集中的纹理和形状特征构成。 在将输入图像过分分割到许多小区域之后,我们识别具有与先前建筑模型类似模式的地区。 这些区域称为建筑物(BLR)。 然后我们组合BLR以获得具有与先前建筑模型类似的形状的候选建筑物区域(CBRS)。 接下来,提取与每个CBR具有强烈关系的线。 从这些线条和CBR边界,生成了2-D屋顶假设。 最后,使用阴影和几何规则来验证假设。 实验结果显示在有数百个建筑物的区域上

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