Building footprints provide a useful proxy for a great many humanitarian applications. For example, building footprints are useful for high fidelity population estimates, and quantifying population statistics is fundamental to ~1/4 of the United Nations Sustainable Development Goals Indicators. In this paper we (the SpaceNet Partners) discuss efforts to develop techniques for precise building footprint localization, tracking, and change detection via the SpaceNet Multi-Temporal Urban Development Challenge (also known as SpaceNet 7). In this NeurIPS 2020 competition, participants were asked identify and track buildings in satellite imagery time series collected over rapidly urbanizing areas. The competition centered around a brand new open source dataset of Planet Labs satellite imagery mosaics at 4m resolution, which includes 24 images (one per month) covering ~100 unique geographies. Tracking individual buildings at this resolution is quite challenging, yet the winning participants demonstrated impressive performance with the newly developed SpaceNet Change and Object Tracking (SCOT) metric. This paper details the top-5 winning approaches, as well as analysis of results that yielded a handful of interesting anecdotes such as decreasing performance with latitude.
翻译:建筑足迹为大量人道主义应用提供了有用的替代物。例如,建筑足迹对于高忠诚度的人口估计很有用,人口统计量化对于联合国可持续发展目标指标的~1/4至关重要。在本文件中,我们(空间网伙伴)讨论了如何通过空间网多时城市发展挑战(又称空间网)来开发精确建筑足迹定位、跟踪和变化探测技术。在这次NeurIPS 2020 年竞赛中,与会者被问及在快速城市化地区收集的卫星图像时间序列中的建筑物。竞争中心围绕一个以4米分辨率为单位的行星实验室卫星成像模型的崭新的开放源数据集,其中包括覆盖~100个独特地理图谱的24张图象(每月1张)。在这项决议中,跟踪单个建筑物是相当具有挑战性的,但获胜的参与者展示了新开发的空间网变化和物体跟踪(SCOT)衡量仪的令人印象深刻的成绩。本文详细介绍了前5个获奖的方法,并分析了产生像纬度下降等一些有趣的图象的结果。