A Benchmark for Building Footprint Classification Using Orthorectified RGB Imagery and Digital Surface Models from Commercial Satellites

H. Goldberg, M. Brown, Sean Wang
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引用次数: 23

Abstract

Identifying building footprints is a critical and challenging problem in many remote sensing applications. Solutions to this problem have been investigated using a variety of sensing modalities as input. In this work, we consider the detection of building footprints from 3D Digital Surface Models (DSMs) created from commercial satellite imagery along with RGB orthorectified imagery. Recent public challenges (SpaceNet 1 and 2, DSTL Satellite Imagery Feature Detection Challenge, and the ISPRS Test Project on Urban Classification) approach this problem using other sensing modalities or higher resolution data. As a result of these challenges and other work, most publically available automated methods for building footprint detection using 2D and 3D data sources as input are meant for high-resolution 3D lidar and 2D airborne imagery, or make use of multispectral imagery as well to aid detection. Performance is typically degraded as the fidelity and post spacing of the 3D lidar data or the 2D imagery is reduced. Furthermore, most software packages do not work well enough with this type of data to enable a fully automated solution. We describe a public benchmark dataset consisting of 50 cm DSMs created from commercial satellite imagery, as well as coincident 50 cm RGB orthorectified imagery products. The dataset includes ground truth building outlines and we propose representative quantitative metrics for evaluating performance. In addition, we provide lessons learned and hope to promote additional research in this field by releasing this public benchmark dataset to the community.
基于正校正RGB图像和商业卫星数字表面模型的建筑足迹分类基准
在许多遥感应用中,识别建筑物足迹是一个关键和具有挑战性的问题。这个问题的解决方案已经研究使用各种传感模式作为输入。在这项工作中,我们考虑从商业卫星图像和RGB正校正图像创建的3D数字表面模型(dsm)中检测建筑足迹。最近的公共挑战(SpaceNet 1和2,DSTL卫星图像特征检测挑战,以及ISPRS城市分类测试项目)使用其他传感模式或更高分辨率的数据来解决这个问题。由于这些挑战和其他工作,大多数公开可用的自动化建筑足迹检测方法使用2D和3D数据源作为输入,用于高分辨率3D激光雷达和2D机载图像,或者利用多光谱图像来辅助检测。由于3D激光雷达数据或2D图像的保真度和后置间距降低,性能通常会下降。此外,大多数软件包不能很好地处理这种类型的数据,无法实现完全自动化的解决方案。我们描述了一个公共基准数据集,包括从商业卫星图像创建的50厘米DSMs,以及一致的50厘米RGB正校正图像产品。该数据集包括地面真相构建大纲,我们提出了评估绩效的代表性定量指标。此外,我们提供了经验教训,并希望通过向社区发布此公共基准数据集来促进该领域的其他研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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