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通过数据融合划定城乡边界:应用于改善城乡环境和促进集约健康城市发展。

Delineation of the Urban-Rural Boundary through Data Fusion: Applications to Improve Urban and Rural Environments and Promote Intensive and Healthy Urban Development.

机构信息

School of Architecture and Planning, Yunnan University, Kunming 650500, China.

出版信息

Int J Environ Res Public Health. 2021 Jul 5;18(13):7180. doi: 10.3390/ijerph18137180.

Abstract

As one of the most important methods for limiting urban sprawl, the accurate delineation of the urban-rural boundary not only promotes the intensive use of urban resources, but also helps to alleviate the urban issues caused by urban sprawl, realizing the intensive and healthy development of urban cities. Previous studies on delineating urban-rural boundaries were only based on the level of urban and rural development reflected by night-time light (NTL) data, ignoring the differences in the spatial development between urban and rural areas; so, the comprehensive consideration of NTL and point of interest (POI) data can help improve the accuracy of urban-rural boundary delineation. In this study, the NTL and POI data were fused using wavelet transform, and then the urban-rural boundary before and after data fusion was delineated by multiresolution segmentation. Finally, the delineation results were verified. The verification result shows that the accuracy of delineating the urban-rural boundary using only NTL data is 84.20%, and the Kappa value is 0.6549; the accuracy using the fusion of NTL and POI data on the basis of wavelet transform is 93.2%, and the Kappa value is 0.8132. Therefore, we concluded that the proposed method of using wavelet transform to fuse NTL and POI data considers the differences between urban and rural development, which significantly improves the accuracy of the delineation of urban-rural boundaries. Accurate delineation of urban-rural boundaries is helpful for optimizing internal spatial structure in both urban and rural areas, alleviating environmental problems resulting from urban development, assisting the formulation of development policies for urban and rural fringes, and promoting the intensive and healthy development of urban areas.

摘要

作为限制城市蔓延的最重要方法之一,准确划定城乡边界不仅可以促进城市资源的集约利用,还有助于缓解城市蔓延带来的城市问题,实现城市的集约和健康发展。以前关于划定城乡边界的研究仅基于夜间灯光(NTL)数据所反映的城乡发展水平,忽略了城乡空间发展的差异;因此,综合考虑 NTL 和兴趣点(POI)数据可以提高城乡边界划定的准确性。在本研究中,使用小波变换融合 NTL 和 POI 数据,然后通过多分辨率分割划定融合前后的城乡边界,并对划定结果进行验证。验证结果表明,仅使用 NTL 数据划定城乡边界的准确率为 84.20%,Kappa 值为 0.6549;基于小波变换融合 NTL 和 POI 数据的准确率为 93.2%,Kappa 值为 0.8132。因此,我们得出结论,提出的使用小波变换融合 NTL 和 POI 数据的方法考虑了城乡发展的差异,显著提高了城乡边界划定的准确性。准确划定城乡边界有助于优化城乡内部空间结构,缓解城市发展带来的环境问题,协助制定城乡边缘发展政策,促进城市的集约和健康发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b462/8296865/346519a63f95/ijerph-18-07180-g001.jpg

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