Rectilinear Building Footprint Regularization Using Deep Learning

P. Schuegraf, Zhixin Li, Jiaojiao Tian, Jie Shan, K. Bittner
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Abstract

Abstract. Nowadays, deep learning allows to automatically learn features from data. Buildings are one of the most important objects in urban environments. They are used in applications such as inputs to building reconstruction, disaster monitoring, city planing and environment modelling for autonomous driving. However, it is not enough to represent them in raster format, since applications require buildings as polygons. We use an existing, learning based approach to extract building footprints from ortho imagery and digital surface model (DSM) and propose a pipeline for building polygon extraction, which we call primary orientation learning (POL). The first step is to extract initial polygons, that contain a vertex for each pixel in the boundary of the footprint. Afterwards, the two primary orientation angles are regressed continuously. Using these orientation, we insert vertices such that all consecutive edges are perpendicular. To the best of our knowledge, our approach is the first to predict a continuous orientation angle for building boundary regularization. Furthermore, the proposed method is highly efficient with an average processing time of 2.879 ms for a single building.
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利用深度学习对建筑足迹进行矩形规整
摘要如今,深度学习可以自动学习数据中的特征。建筑物是城市环境中最重要的物体之一。它们被用于建筑重建、灾害监测、城市规划和自动驾驶环境建模等应用中。然而,仅用栅格格式表示它们是不够的,因为应用需要将建筑物表示为多边形。我们利用现有的基于学习的方法,从正射影像和数字地表模型(DSM)中提取建筑物足迹,并提出了一个提取建筑物多边形的管道,我们称之为主方向学习(POL)。第一步是提取初始多边形,该多边形包含足迹边界中每个像素的顶点。然后,连续回归两个主方向角。利用这些方向,我们插入顶点,使所有连续的边垂直。据我们所知,我们的方法是第一个为建筑物边界正则化预测连续方向角的方法。此外,我们提出的方法效率很高,单个建筑物的平均处理时间为 2.879 毫秒。
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