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The Random Forest-Based Method of Fine-Resolution Population Spatialization by Using the International Space Station Nighttime Photography and Social Sensing Data

机译:采用国际空间站夜间摄影和社会传感数据的若干森林群空间化方法

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摘要

Despite the importance of high-resolution population distribution in urban planning, disaster prevention and response, region economic development, and improvement of urban habitant environment, traditional urban investigations mainly focused on large-scale population spatialization by using coarse-resolution nighttime light (NTL) while few efforts were made to fine-resolution population mapping. To address problems of generating small-scale population distribution, this paper proposed a method based on the Random Forest Regression model to spatialize a 25 m population from the International Space Station (ISS) photography and urban function zones generated from social sensing data—point-of-interest (POI). There were three main steps, namely HSL (hue saturation lightness) transformation and saturation calibration of ISS, generating functional-zone maps based on point-of-interest, and spatializing population based on the Random Forest model. After accuracy assessments by comparing with WorldPop, the proposed method was validated as a qualified method to generate fine-resolution population spatial maps. In the discussion, this paper suggested that without help of auxiliary data, NTL cannot be directly employed as a population indicator at small scale. The Variable Importance Measure of the RF model confirmed the correlation between features and population and further demonstrated that urban functions performed better than LULC (Land Use and Land Cover) in small-scale population mapping. Urban height was also shown to improve the performance of population disaggregation due to its compensation of building volume. To sum up, this proposed method showed great potential to disaggregate fine-resolution population and other urban socio-economic attributes.
机译:尽管在城市规划,防灾救灾,区域经济发展,城市人居环境的改善高分辨率人口分布的重要性,传统的城市的调查主要集中在大规模的人口空间化利用粗分辨率夜间光(NTL)而一些努力,以精细分辨率人口映射做。为了产生小规模的人口分布的地址问题,本文提出了基于随机森林回归模型的方法来从空间化国际空间站(ISS)摄影和社会感知产生的城市功能区数据点对多点25μm的人口兴趣点(POI)。有三个主要步骤,即HSL(色相饱和度亮度)改造和ISS的饱和度校正,生成功能区映射基于点的利息,并基于随机森林模型空间化人口。通过与WorldPop比较准确的评估后,所提出的方法进行了验证作为一个合格的方法来生成精细分辨率人口空间地图。在讨论中,本文认为,在没有辅助数据的帮助下,NTL不能直接用作在小规模的群体指示器。射频模型的变量重要性测量确认功能和人口之间的相关性进一步表明,城市功能比小规模人口映射LULC(土地利用和土地覆盖)表现较好。城市高度也表现出提高人口分列的性能,因为建筑容积其赔偿。综上所述,该提出的方法表现出了极大的潜力来分解精细分辨率人口和其他城市的社会经济属性。

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