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MULTI-SCALE BUILDING MAPS FROM AERIAL IMAGERY

机译:来自空中图像的多尺度建筑地图

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Nowadays, the extraction of buildings from aerial imagery is mainly done through deep convolutional neural networks (DCNNs). Buildings are predicted as binary pixel masks and then regularized to polygons. Restricted by nearby occlusions (such as trees), building eaves, and sometimes imperfect imagery data, these results can hardly be used to generate detailed building footprints comparable to authoritative data. Therefore, most products can only be used for mapping at smaller map scale. The level of detail that should be retained is normally determined by the scale parameter in the regularization algorithm. However, this scale information has been already defined in cartography. From existing maps of different scales, neural network can be used to learn such scale information implicitly. The network can perform generalization directly on the mask output and generate multi-scale building maps at once.In this work, a pipeline method is proposed, which can generate multi-scale building maps from aerial imagery directly. We used a land cover classification model to provide the building blobs. With the models pre-trained for cartographic building generalization, blobs were generalized to three target map scales, 1:10,000, 1:15,000, and 1:25,000. After post-processing with vectorization and regularization, multi-scale building maps were generated and then compared with existing authoritative building data qualitatively and quantitatively. In addition, change detection was performed and suggestions for unmapped buildings could be provided at a desired map scale.
机译:如今,来自空中图像的建筑物的提取主要通过深卷积神经网络(DCNN)进行。建筑物预测为二进制像素掩码,然后正常化为多边形。受附近闭塞(如树木)的限制,建筑物屋檐,有时是不完美的图像数据,这些结果几乎不能用于生成与权威数据相当的详细构建足迹。因此,大多数产品只能用于较小地图刻度的映射。应该保留的详细程度通常由正则化算法中的比例参数确定。但是,该规模信息已经在制图中定义。从现有的不同尺度的地图,神经网络可用于隐含地学习这种规模信息。网络可以直接在掩码输出上执行泛化,并立即生成多尺度建筑地图。在此工作中,提出了一种管道方法,可以直接生成来自空中图像的多尺度建筑地图。我们使用了土地覆盖分类模型来提供建筑物斑点。通过预先接受制图建设泛化的模型,Blob广泛地推广到三个目标地图秤,1:10,000,1:15,000和1:25,000。在使用矢量化和正规化后处理后,产生多尺度建筑地图,然后与定性和定量的现有权威建筑数据进行比较。另外,执行变化检测,并且可以以期望的地图比例提供对未映射建筑物的建议。

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