论文标题
OpenStreetMap:机器学习和遥感中的挑战和机遇
OpenStreetMap: Challenges and Opportunities in Machine Learning and Remote Sensing
论文作者
论文摘要
OpenStreetMap(OSM)是一种基于社区的,可自由的,可编辑的地图服务,是为权威性的替代品创建的。鉴于它主要由具有不同映射技巧的志愿者编辑,因此其注释的完整性和质量在不同的地理位置之间是异质的。尽管如此,OSM已被广泛用于{Geosciences},地球观察和环境科学的多种应用中。在这项工作中,我们对基于机器学习的最新方法进行了评论,以改进和使用OSM数据。这种方法的目的是1)改善通常使用GIS和遥感技术的OSM层的覆盖范围和质量,或者2)使用现有的OSM层基于图像数据来训练模型,以服务于导航或{土地使用}分类等应用程序。我们认为,OSM(以及其他开放地图的其他来源)可以改变我们解释遥感数据的方式,并且机器学习的协同作用可以扩展参与式地图及其质量及其质量达到服务全球和最新土地映射所需的水平。
OpenStreetMap (OSM) is a community-based, freely available, editable map service that was created as an alternative to authoritative ones. Given that it is edited mainly by volunteers with different mapping skills, the completeness and quality of its annotations are heterogeneous across different geographical locations. Despite that, OSM has been widely used in several applications in {Geosciences}, Earth Observation and environmental sciences. In this work, we present a review of recent methods based on machine learning to improve and use OSM data. Such methods aim either 1) at improving the coverage and quality of OSM layers, typically using GIS and remote sensing technologies, or 2) at using the existing OSM layers to train models based on image data to serve applications like navigation or {land use} classification. We believe that OSM (as well as other sources of open land maps) can change the way we interpret remote sensing data and that the synergy with machine learning can scale participatory map making and its quality to the level needed to serve global and up-to-date land mapping.