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Building Extraction from Satellite Images Using Mask R-CNN with Building Boundary Regularization

机译:使用蒙版R-CNN和建筑物边界正则化从卫星图像中提取建筑物

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The DeepGlobe Building Extraction Challenge poses the problem of localizing all building polygons in the given satellite images. We can create polygons using an existing instance segmentation algorithm based on Mask R-CNN. However, polygons produced from instance segmentation have irregular shapes, which are far different from real building footprint boundaries and therefore cannot be directly applied to many cartographic and engineering applications. Hence, we present a method combining Mask R-CNN with building boundary regularization. Through the experiments, we find that the proposed method and Mask R-CNN achieve almost equivalent performance in terms of accuracy and completeness. However, compared to Mask R-CNN, our method produces better regularized polygons which are beneficial in many applications.
机译:DeepGlobe建筑物提取挑战提出了在给定卫星图像中定位所有建筑物多边形的问题。我们可以使用基于Mask R-CNN的现有实例分割算法来创建多边形。但是,由实例分割产生的多边形具有不规则的形状,这与实际的建筑物覆盖范围边界大不相同,因此不能直接应用于许多制图和工程应用。因此,我们提出一种结合Mask R-CNN与建筑物边界正则化的方法。通过实验,我们发现所提方法和Mask R-CNN在准确性和完整性方面达到了几乎相同的性能。但是,与Mask R-CNN相比,我们的方法可产生更好的规则多边形,这在许多应用中都是有益的。

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