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Open land-use map: a regional land-use mapping strategy for incorporating OpenStreetMap with earth observations

机译:开放土地使用地图:区域土地利用映射策略,用于将OpenStreetMap与地球观测合并

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摘要

A land-use map at the regional scale is a heavy computation task yet is critical to most landowners, researchers, and decision-makers, enabling them to make informed decisions for varying objectives. There are two major difficulties in generating land classification maps at the regional scale: the necessity of large data-sets of training points and the expensive computation cost in terms of both money and time. Volunteered Geographic Information opens a new era in mapping and visualizing the physical world by providing an open-access database valuable georeferenced information collected by volunteer citizens. As one of the most well-known VGI initiatives, OpenStreetMap (OSM), contributes not only to road network distribution information but also to the potential for using these data to justify and delineate land patterns. Whereas, most large-scale mapping approaches – including regional and national scales – confuse “land cover” and “land-use”, or build up the land-use database based on modeled land cover data-sets, in this study, we clearly distinguished and differentiated land-use from land cover. By focusing on our prime objective of mapping land-use and management practices, a robust regional land-use mapping approach was developed by integrating OSM data with the earth observation remote sensing imagery. Our novel approach incorporates a vital temporal component to large-scale land-use mapping while effectively eliminating the typically burdensome computation and time/money demands of such work. Furthermore, our novel approach in regional scale land-use mapping produced robust results in our study area: the overall internal accuracy of the classifier was 95.2% and the external accuracy of the classifier was measured at 74.8%.
机译:土地利用地图区域尺度是一个沉重的计算任务仍然是最地主,研究人员和决策者的关键,使他们能够做出明智的决策变化的目标。大型数据集的训练点和昂贵的计算成本的必要性在金钱和时间方面:有生成土地分类两大困难映射区域尺度。自愿提供的数据打开了映射,并通过提供志愿公民收集的开放式访问数据库有价值的地理参考信息可视化的物理世界的新时代。作为最知名的VGI举措之一,OpenStreetMap的(OSM),不仅路网分布信息,同时也为利用这些数据来证明和描出土地格局的潜力有助于。然而,大多数大比例尺制图方法 - 包括区域和国家层面 - 混淆“土地覆盖”和“土地利用”,或基于模型的土地覆盖数据集建立土地利用数据库,在这项研究中,我们清楚地区分和区别从土地覆盖土地利用。通过专注于我们的映射土地利用和管理方式的主要目标,一个强大的区域土地利用制图方法是由与地球观测遥感影像整合OSM的数据开发的。我们的新方法采用了至关重要的时间分量的大规模土地使用映射同时有效地消除这种工作通常繁琐的计算和时间/金钱的需求。此外,我们在区域范围土地使用映射的新方法产生的在我们的研究区域健壮的结果:分类器的整体内部准确度为95.2%,在74.8%测定分类器的外部精度。

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