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Identifying and evaluating poverty using multisource remote sensing and point of interest (POI) data: A case study of Chongqing, China

机译:使用Multisource遥感和兴趣点识别和评估贫困(POI)数据:中国重庆的案例研究

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摘要

Poverty is a chronic worldwide dilemma that can seriously hamper human sustainable development, which is closely related to economic growth, environmental protection, ecological restoration, and sustainable utilization of resources. Accurately and effectively identifying and evaluating poverty has become an important prerequisite for allowing Chinese governments to make reasonable poverty reduction and alleviation policies. Thus, using Chongqing as a study area, the purpose of this study was to analyze poverty from multiple viewpoints based on multiple data sources. First, a comprehensive poverty index (CPI) was developed by combining nighttime light data, the digital elevation model (DEM), the normalized differential vegetation index (NDVI), and point of interest (POI) data to map poverty at a 500-m spatial resolution. Then, the performance of the CPI was validated with poverty-stricken villages, Google Earth images, and the multidimensional poverty index (MPI). Finally, spatial autocorrelation analysis was used to explore the spatial distribution of poverty across county and town levels. The results revealed that the CPI could provide an effective way of identifying the spatial distribution of poverty when compared with three validated indexes. Most of the rich counties were in the center of Chongqing, whereas the poor counties were located in the northeast and southeast of Chongqing. The Global Moran's I index showed that there were significantly positive spatial autocorrelations of poverty, and that the spatial autocorrelation of poverty was more significant at the town level compared to the county level. Among the selected factors, the POI cost distance was the most import factor for assessing poverty. Our study will be valuable for providing scientific references for the government to implement precise poverty alleviation methods with differentiated policies in China. (C) 2020 Elsevier Ltd. All rights reserved.
机译:贫困是一种慢性全球困境,可以严重妨碍人类可持续发展,与经济增长,环境保护,生态修复和资源可持续利用密切相关。准确且有效地识别和评估贫困已成为允许中国政府做出合理减贫和减轻政策的重要先决条件。因此,使用重庆作为研究领域,本研究的目的是根据多个数据来源从多个观点分析贫困。首先,通过将夜间光数据,数字海拔模型(DEM),归一化差分植被指数(NDVI)和兴趣点(POI)数据组合来映射贫困,以映射贫困来绘制综合扶贫指数(CPI)。空间分辨率。然后,将CPI的性能与贫困村,谷歌地球图像和多维贫困指数(MPI)进行了验证。最后,使用空间自相关分析来探讨县域跨越贫困的空间分布。结果表明,与三项经过验证指标相比,CPI可以提供识别贫困空间分布的有效方法。大多数丰富的县都在重庆市中心,而贫困县位于重庆东北部和东南部。全球莫兰的I指数表明,与县级相比,贫困的空间自相关性具有显着积极的空间自相关,而贫困的空间自相关是更重要的。在所选因素中,POI成本距离是评估贫困的最多导入因素。我们的研究对于为政府提供科学的参考资料,将在中国差异化政策实施精确的扶贫方法。 (c)2020 elestvier有限公司保留所有权利。

著录项

  • 来源
    《Journal of Cleaner Production》 |2020年第may10期|120245.1-120245.12|共12页
  • 作者单位

    Southwest Univ Sch Geog Sci State Cultivat Base Ecoagr Southwest Mt Land Chongqing 400715 Peoples R China|Southwest Univ Sch Geog Sci Chongqing Jinfo Mt Field Sci Observat & Res Stn K Chongqing 400715 Peoples R China|Southwest Univ Chongqing Engn Res Ctr Remote Sensing Big Data Ap Sch Geog Sci Chongqing 400715 Peoples R China;

    Southwest Univ Sch Geog Sci State Cultivat Base Ecoagr Southwest Mt Land Chongqing 400715 Peoples R China|Southwest Univ Sch Geog Sci Chongqing Jinfo Mt Field Sci Observat & Res Stn K Chongqing 400715 Peoples R China|Southwest Univ Chongqing Engn Res Ctr Remote Sensing Big Data Ap Sch Geog Sci Chongqing 400715 Peoples R China;

    East China Normal Univ Key Lab Geog Informat Sci Minist Educ 500 Dongchuan Rd Shanghai 200241 Peoples R China|East China Normal Univ Sch Geog Sci Shanghai 200241 Peoples R China;

    East China Normal Univ Key Lab Geog Informat Sci Minist Educ 500 Dongchuan Rd Shanghai 200241 Peoples R China|East China Normal Univ Sch Geog Sci Shanghai 200241 Peoples R China;

    East China Normal Univ Key Lab Geog Informat Sci Minist Educ 500 Dongchuan Rd Shanghai 200241 Peoples R China|East China Normal Univ Sch Geog Sci Shanghai 200241 Peoples R China;

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

    Poverty; Nighttime light data; POI; Multiscale analysis; Chongqing;

    机译:贫困;夜间光数据;POI;多尺度分析;重庆;

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