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An Automated Approach for Quality Assessment of OpenStreetMap Data

机译:OpenStreetMap数据质量评估的自动化方法

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摘要

OpenStreetMap (OSM) is a valuable source of geographical data where any volunteer user can participate. The contributing users have different mapping experience and motives and also use different mapping gadgets to collect data. As a result many discrepancies may found in OSM data. Many efforts have been made by research community to evaluate the OSM data quality by comparing it with other proprietary datasets. These methods are not suitable in absence of reference datasets. So in this paper, a machine learning based solution is provided. It uses intrinsic parameters like road length, attributes of OSM objects to train machine learning model to improve the quality of OSM data. The trained model is applied over Patiala, India dataset to detect and rectify the errors like missing or incorrect attributes of nodes and ways. The results of the study shows that without using any external dataset for comparison, this proposed methodology shows a desirable results for enhancing OSM data quality.
机译:OpenStreetMap(OSM)是重要的地理数据源,任何志愿者用户都可以参与。做出贡献的用户具有不同的映射经验和动机,并且还使用不同的映射小工具来收集数据。结果,在OSM数据中可能会发现许多差异。研究界已经做出了许多努力,通过将OSM数据质量与其他专有数据集进行比较来评估OSM数据质量。在没有参考数据集的情况下,这些方法不适用。因此,本文提供了一种基于机器学习的解决方案。它使用诸如道路长度,OSM对象的属性之类的固有参数来训练机器学习模型,以提高OSM数据的质量。将训练后的模型应用于印度Patiala数据集,以检测并纠正错误,例如节点和路的属性缺失或不正确。研究结果表明,在不使用任何外部数据集进行比较的情况下,该提议的方法显示出可提高OSM数据质量的理想结果。

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