Evaluating OSM Building Footprint Data Quality in Québec Province, Canada from 2018 to 2023: A Comparative Study

Geomatics Pub Date : 2023-12-09 DOI:10.3390/geomatics3040029
M. Moradi, Stéphane Roche, M. Mostafavi
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Abstract

OpenStreetMap (OSM) is among the most prominent Volunteered Geographic Information (VGI) initiatives, aiming to create a freely accessible world map. Despite its success, the data quality of OSM remains variable. This study begins by identifying the quality metrics proposed by earlier research to assess the quality of OSM building footprints. It then evaluates the quality of OSM building data from 2018 and 2023 for five cities within Québec, Canada. The analysis reveals a significant quality improvement over time. In 2018, the completeness of OSM building footprints in the examined cities averaged around 5%, while by 2023, it had increased to approximately 35%. However, this improvement was not evenly distributed. For example, Shawinigan saw its completeness surge from 2% to 99%. The study also finds that OSM contributors were more likely to digitize larger buildings before smaller ones. Positional accuracy saw enhancement, with the average error shrinking from 3.7 m in 2018 to 2.3 m in 2023. The average distance measure suggests a modest increase in shape accuracy over the same period. Overall, while the quality of OSM building footprints has indeed improved, this study shows that the extent of the improvement varied significantly across different cities. Shawinigan experienced a substantial increase in data quality compared to its counterparts.
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评估 2018 至 2023 年加拿大魁北克省 OSM 建筑足迹数据质量:比较研究
开放街图(OSM)是最著名的志愿地理信息(VGI)计划之一,旨在创建一个可免费访问的世界地图。尽管取得了成功,但 OSM 的数据质量仍然参差不齐。本研究首先确定了早期研究提出的质量指标,以评估 OSM 建筑足迹的质量。然后,它对加拿大魁北克省五个城市 2018 年和 2023 年的 OSM 建筑数据质量进行了评估。分析表明,随着时间的推移,质量有了显著提高。2018 年,受检城市 OSM 建筑足迹的完整度平均约为 5%,而到 2023 年,完整度已提高到约 35%。然而,这种改善并不是均匀分布的。例如,沙维尼根的完整率从 2% 猛增至 99%。研究还发现,OSM 的贡献者更倾向于先对大型建筑进行数字化,然后再对小型建筑进行数字化。定位精度有所提高,平均误差从 2018 年的 3.7 米缩小到 2023 年的 2.3 米。平均距离测量结果表明,同期的形状精度略有提高。总体而言,虽然 OSM 建筑足迹的质量确实有所改善,但本研究表明,不同城市的改善程度差异很大。与同类城市相比,沙维尼根的数据质量大幅提高。
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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