首页> 外文会议>Asian conference on remote sensing;ACRS >Estimation of Population Distribution Using Satellite Imagery and GIS Data
【24h】

Estimation of Population Distribution Using Satellite Imagery and GIS Data

机译:利用卫星图像和GIS数据估算人口分布

获取原文

摘要

Spatial distribution of population map at a finer scale is useful for planning and policy development. A number of population estimation techniques have been developed to disaggregate census data and predict density of population at finer scale. Therefore, this research is one of those attempts to improving high resolution on human population distributions, by presenting a new modeling approach to map the population using census, building footprints, satellite imagery, and ancillary data. The data were processed through four main steps: (1) data collection and pre-processing including: population and building footprints extraction from census data and cadastral map and/or satellite data, respectively; socioeconomic and building information survey using DRM Survey mobile application which developed by Geoinformatics Center, Asian Institute of Technology (GIC-AIT, Thailand); and ancillary data collection, including: topographic, infrastructure, river network, road network, satellite data, and night-time light imagery; (2) covariates preparation for fitting and predicting randomForest models; (3) model adjustment and estimation population at building level; and (4) geospatial population distribution mapping at 30m spatial resolution. Validation of results was made by comparing the estimation with the observation data at building level, which showed a good correlation with R2 = 0.83. We found that RF model performs better than several other commonly used models. An assessment of covariates is important for accurately estimating population. The values of variable importance may fluctuate as the number of covariates is reduced. However, relative ranking is quite stable among top covariates, for example: distance to function area (hospital, school, post office, ...), road networks, or night-time light are most important predictors for reducing amount of variability left in log population of training data. An advantage with the approach is that we can aggregated population can be re-distributed to a fine scale, providing quantitative information of planning and policy development.
机译:较小规模的人口图空间分布对于规划和政策制定很有用。已经开发了许多人口估计技术来分解人口普查数据并以更小规模预测人口密度。因此,这项研究是通过提出一种新的建模方法来使用人口普查,建筑足迹,卫星图像和辅助数据来绘制人口图的方法,旨在提高人口分布的高分辨率的尝试之一。数据通过四个主要步骤进行处理:(1)数据收集和预处理,包括:分别从普查数据和地籍图和/或卫星数据中提取人口和建筑足迹;使用由亚洲技术学院(泰国GIC-AIT)地理信息中心开发的DRM Survey移动应用进行的社会经济和建筑信息调查;辅助数据收集,包括:地形,基础设施,河网,公路网,卫星数据和夜间光图像; (2)协变量准备以拟合和预测randomForest模型; (3)在建筑水平上进行模型调整和估算人口; (4)30m空间分辨率的地理空间人口分布图。通过将估算值与建筑物级别的观察数据进行比较,对结果进行了验证,结果与R2 = 0.83有很好的相关性。我们发现RF模型的性能优于其他几种常用模型。协变量的评估对于准确估计人口很重要。变量重要性的值可能会随着协变量数量的减少而波动。但是,相对协变量在最高协变量之间相当稳定,例如:距功能区域(医院,学校,邮局等)的距离,道路网络或夜间灯光是减少残留在变量中的最重要的预测指标记录训练数据的填充量。这种方法的优点是我们可以将总体人口重新分配到一个很好的规模,从而提供计划和政策制定的定量信息。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号