Assessing Completeness of OpenStreetMap Building Footprints Using MapSwipe

Tahir Ullah, S. Lautenbach, B. Herfort, M. Reinmuth, D. Schorlemmer
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引用次数: 3

Abstract

Natural hazards threaten millions of people all over the world. To address this risk, exposure and vulnerability models with high resolution data are essential. However, in many areas of the world, exposure models are rather coarse and are aggregated over large areas. Although OpenStreetMap (OSM) offers great potential to assess risk at a detailed building-by-building level, the completeness of OSM building footprints is still heterogeneous. We present an approach to close this gap by means of crowd-sourcing based on the mobile app MapSwipe, where volunteers swipe through satellite images of a region collecting user feedback on classification tasks. For our application, MapSwipe was extended by a completeness feature that allows to classify a tile as “no building”, “complete” or “incomplete”. To assess the quality of the produced data, the completeness feature was applied to four regions. The MapSwipe-based assessment was compared with an intrinsic approach to quantify completeness and with the prediction of an existing model. Our results show that the crowd-sourced approach yields a reasonable classification performance of the completeness of OSM building footprints. Results showed that the MapSwipe-based assessment produced consistent estimates for the case study regions while the other two approaches showed a higher variability. Our study also revealed that volunteers tend to classify nearly completely mapped tiles as “complete”, especially in areas with a high OSM building density. Another factor that influenced the classification performance was the level of alignment of the OSM layer with the satellite imagery.
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使用MapSwipe评估OpenStreetMap建筑足迹的完整性
自然灾害威胁着全世界数百万人。要解决这一风险,具有高分辨率数据的暴露和脆弱性模型至关重要。然而,在世界上许多地区,暴露模型相当粗糙,而且是在大范围内汇总的。尽管OpenStreetMap (OSM)提供了巨大的潜力,可以在逐个建筑的详细级别上评估风险,但是OSM建筑足迹的完整性仍然是异构的。我们提出了一种方法,通过基于移动应用程序MapSwipe的众包方式来缩小这一差距,志愿者通过滑动一个地区的卫星图像来收集用户对分类任务的反馈。对于我们的应用程序,MapSwipe扩展了一个完整性功能,允许将瓷砖分类为“没有建筑”、“完成”或“不完整”。为了评估所产生数据的质量,完整性特征应用于四个区域。将基于mapswipe的评估与量化完整性的内在方法以及现有模型的预测进行比较。我们的研究结果表明,众包方法对OSM建筑足迹的完整性产生了合理的分类性能。结果表明,基于mapswipe的评估对案例研究区域产生了一致的估计,而其他两种方法显示出更高的可变性。我们的研究还显示,志愿者倾向于将几乎完全绘制的瓷砖分类为“完整”,特别是在OSM建筑密度高的地区。影响分类性能的另一个因素是OSM层与卫星图像的对准程度。
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