A New Method for Building-Level Population Estimation by Integrating LiDAR, Nighttime Light, and POI Data

遥感学报 Pub Date : 2021-05-06 DOI:10.34133/2021/9803796
Hongxing Chen, Bin Wu, Bailang Yu, Zuoqi Chen, Qiusheng Wu, Ting Lian, Congxiao Wang, Qiaoxuan Li, Jianping Wu
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引用次数: 19

Abstract

Building-level population data are of vital importance in disaster management, homeland security, and public health. Remotely sensed data, especially LiDAR data, which allow measures of three-dimensional morphological information, have been shown to be useful for fine-scale population estimations. However, studies using LiDAR data for population estimation have noted a nonstationary relationship between LiDAR-derived morphological indicators and populations due to the unbalanced characteristic of population distribution. In this article, we proposed a framework to estimate population at the building level by integrating POI data, nighttime light (NTL) data, and LiDAR data. Building objects were first derived using LiDAR data and aerial photographs. Then, three categories of building-level features, including geometric features, nighttime light intensity features, and POI features, were, respectively, extracted from LiDAR data, Luojia1-01 NTL data, and POI data. Finally, a well-trained random forest model was built to estimate the population of each individual building. Huangpu District in Shanghai, China, was chosen to validate the proposed method. A comparison between the estimation result and reference data shows that the proposed method achieved a good accuracy with at the building level and at the community level. The NTL radiance intensity was found to have a positive relationship with population in residential areas, while a negative relationship was found in office and commercial areas. Our study has shown that by integrating both the three-dimensional morphological information derived from LiDAR data and the human activity information extracted from POI and NTL data, the accuracy of building-level population estimation can be improved.
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基于激光雷达、夜间灯光和POI数据的建筑物人口估计新方法
建筑物级别的人口数据在灾害管理、国土安全和公共卫生方面至关重要。遥感数据,特别是激光雷达数据,可以测量三维形态信息,已被证明可用于精细规模的种群估计。然而,使用激光雷达数据进行种群估计的研究注意到,由于种群分布的不平衡特征,激光雷达衍生的形态指标与种群之间存在非平稳关系。在本文中,我们提出了一个框架,通过集成POI数据、夜间照明(NTL)数据和激光雷达数据来估计建筑级别的人口。建筑物体最初是使用激光雷达数据和航空照片得出的。然后,从激光雷达数据、罗家1-01 NTL数据和POI数据中分别提取了三类建筑级特征,包括几何特征、夜间光强特征和POI特征。最后,建立了一个训练有素的随机森林模型来估计每栋建筑的人口。选择中国上海市黄浦区对所提出的方法进行验证。估算结果与参考数据的比较表明,该方法在建筑和社区层面都取得了良好的精度。NTL辐射强度在住宅区与人口呈正相关,而在办公区和商业区与人口呈负相关。我们的研究表明,通过整合从激光雷达数据中获得的三维形态信息和从POI和NTL数据中提取的人类活动信息,可以提高建筑级人口估计的准确性。
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遥感学报
遥感学报 Social Sciences-Geography, Planning and Development
CiteScore
3.60
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0.00%
发文量
3200
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