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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Mapping essential urban land use categories with open big data: Results for five metropolitan areas in the United States of America
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Mapping essential urban land use categories with open big data: Results for five metropolitan areas in the United States of America

机译:映射必要的城市土地利用类别,具有开放大数据:结果五大大都市区

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摘要

Urban land-use maps outlining the distribution, pattern, and composition of various land use types are critically important for urban planning, environmental management, disaster control, health protection, and biodiversity conservation. Recent advances in remote sensing and social sensing data and methods have shown great potentials in mapping urban land use categories, but they are still constrained by mixed land uses, limited predictors, non-localized models, and often relatively low accuracies. To inform these issues, we proposed a robust and cost-effective framework for mapping urban land use categories using openly available multi-source geo-spatial "big data". With street blocks generated from OpenStreetMap (OSM) data as the minimum classification unit, we integrated an expansive set of multi-scale spatially explicit information on land surface, vertical height, socio-economic attributes, social media, demography, and topography. We further proposed to apply the automatic ensemble learning that leverages a bunch of machine learning algorithms in deriving optimal urban land use classification maps. Results of block-level urban land use classification in five metropolitan areas of the United States found the overall accuracies of major-class (Level-I) and minor-class (Level-II) classification could be high as 91% and 86%, respectively. A multi-model comparison revealed that for urban land use classification with high-dimensional features, the multi-layer stacking ensemble models achieved better performance than base models such as random forest, extremely randomized trees, LightGBM, CatBoost, and neural networks. We found without very-high-resolution National Agriculture Imagery Program imagery, the classification results derived from Sentinel-1, Sentinel-2, and other open big data based features could achieve plausible overall accuracies of Level-I and Level-II classification at 88% and 81%, respectively. We also found that model transferability depended highly on the heterogeneity in characteristics of different regions. The methods and findings in this study systematically elucidate the role of data sources, classification methods, and feature transferability in block-level land use classifications, which have important implications for mapping multi-scale essential urban land use categories.
机译:城市土地利用地图概述各种土地利用类型的分销,模式和组成对城市规划,环境管理,灾害控制,健康保护和生物多样性保护是至关重要的。遥感和社会传感数据和方法的最新进展在映射城市土地使用类别方面表现出很大的潜力,但它们仍然受到混合土地使用,有限的预测因子,非本地化模型以及通常相对较低的准确性的限制。要通知这些问题,我们提出了一种使用公开可用的多源地球空间“大数据”映射城市土地利用类别的强大且具有成本效益的框架。使用从OpenStreetMap(OSM)数据生成的街区作为最小分类单元,我们在陆地,垂直高度,社会经济属性,社交媒体,人口统计学和地形上集成了一组广泛的多尺度空间显式信息。我们进一步提出应用自动集合学习,利用一堆机器学习算法在推导最佳的城市土地使用分类地图中。块级城市土地利用分类的结果在美国五大地区发现了主要阶级(Ⅰ级)和小阶级(第II级)分类的总体准确性,可高达91%和86%,分别。多模型比较显示,对于城市土地利用具有高维特征的分类,多层堆叠集合模型的性能比随机森林,极其随机树木,灯光,Catboost和神经网络等基础型号实现了更好的性能。我们发现没有非常高分辨率的国家农业图像图像图像,来自Sentinel-1,Sentinel-2和其他开放基于大数据的分类结果可以在88处实现合理的整体精度和II级分类的合理的整体精度%和81%。我们还发现,模型转移性依赖于不同地区特征的异质性。本研究中的方法和调查结果系统地阐明了块级土地利用分类中的数据源,分类方法和特征可转移性的作用,这对映射多尺度基本城市土地利用类别具有重要意义。

著录项

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  • 作者单位

    Univ Hong Kong Div Landscape Architecture Fac Architecture Hong Kong Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China;

    Hong Kong Polytech Univ Dept Land Surveying & Geoinformat Hong Kong Peoples R China|Hong Kong Polytech Univ Smart Cities Res Inst Hong Kong Peoples R China;

    Conservat Planning Technol Ft Collins CO 80521 USA|Colorado State Univ Dept Fish Wildlife & Conservat Biol Ft Collins CO 80523 USA;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China;

    China Agr Univ Coll Land Sci & Technol Beijing 100083 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China|Tsinghua Univ Tsinghua Urban Inst Beijing 100084 Peoples R China|Tsinghua Univ Ctr Hlth Cities Inst China Sustainable Urbanizat Beijing 100084 Peoples R China;

    Chinese Acad Sci Aerosp Informat Res Inst State Key Lab Remote Sensing Sci Beijing 100101 Peoples R China;

    Tsinghua Univ Cross Strait Inst AI Earth Lab Beijing 100084 Peoples R China;

    Univ Hong Kong Dept Geog & Earth Sci Hong Kong Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China|Tsinghua Univ Tsinghua Urban Inst Beijing 100084 Peoples R China|Tsinghua Univ Ctr Hlth Cities Inst China Sustainable Urbanizat Beijing 100084 Peoples R China;

    Tsinghua Univ Dept Earth Syst Sci Key Lab Earth Syst Modeling Minist Educ Beijing 100084 Peoples R China|Tsinghua Univ Tsinghua Urban Inst Beijing 100084 Peoples R China|Tsinghua Univ Ctr Hlth Cities Inst China Sustainable Urbanizat Beijing 100084 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Land use classification; Block-level mapping; Geospatial big data; Ensemble learning; NAIP; Sentinel-1/2;

    机译:土地使用分类;块级映射;地理空间大数据;集合学习;鸟类;仙女;哨兵-1 / 2;

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