Using POI Data and Baidu Migration Big Data to Modify Nighttime Light Data to Identify Urban and Rural Area

被引:14
作者
Chen, Yaping [1 ]
Deng, Akot [2 ]
机构
[1] Zhejiang Guangsha Vocat & Tech Univ Construct, Sch CML Engn Architecture, Dongyang 322100, Zhejiang, Peoples R China
[2] Sudan Univ Sci & Technol, Architecture & Planning, Khartoum 999129, Sudan
关键词
Urban areas; Statistics; Sociology; Spatial resolution; Image fusion; Web and internet services; Data integration; Urban-rural difference; POI; night light; BM~data; Zhengzhou; DATA FUSION; LANDSCAPE PATTERN; EXTRACTION; CITY; STRATEGY; DENSITY; IMAGERY; DIVIDE; GREEN;
D O I
10.1109/ACCESS.2022.3203433
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The spatial difference between urban and rural areas is the direct result of urban-rural relations. Accurate identification of urban-rural area is helpful to judge the urban-rural mechanism and promote the integration development of urban-rural area. Previous studies only used single nighttime light (NTL) data to identify urban and rural areas, which is likely to have an impact on the identification results due to the large brightness difference of lights. Therefore, based on NTL data and combine with data level fusion algorithm, this study separately fuses point of interest (POI) data that representing the quantity distribution of urban infrastructure and Baidu migration big (BM)data that representing the change relationship of regional population mobility to identify urban and rural areas by using deep learning method. The results show that the highest accuracy of urban-rural spatial identification with single NTL data is 84.32% and kappa is 0.6952, while the highest accuracy identified by data fusion is 95.02% and kappa is 0.8259. It can be seen that the differences caused by light brightness are effectively corrected after data fusion, which greatly improves the accuracy of urban and rural spatial identification. By comparing the results of NTL data modified by different big data, this study analyzes and identifies the accuracy of urban and rural area by using deep learning method, which not only enriches the study of data fusion in urban area, but also provides a basis for analyzing regional urban-rural relations and urban-rural development. Therefore, this study is believed to have important practical value for the coordinated development of urban and rural areas.
引用
收藏
页码:93513 / 93524
页数:12
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