A novel method for grading urban socio-economic development levels based on NTL data and Landsat data

The normalization of assessing urban socio-economic development levels contributed to the formulation of sound urban development strategies. Traditional methods predominantly dependent on socio-economic statistics, frequently resulted in exorbitant data collection costs, significant time lags, and i...

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Bibliographic Details
Main Authors: Xiang Hua, Jiehai Cheng, Yuke Meng, Rongji Luo
Format: Article
Language:English
Published: Taylor & Francis Group 2025-12-01
Series:Geocarto International
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Online Access:https://www.tandfonline.com/doi/10.1080/10106049.2025.2527932
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Summary:The normalization of assessing urban socio-economic development levels contributed to the formulation of sound urban development strategies. Traditional methods predominantly dependent on socio-economic statistics, frequently resulted in exorbitant data collection costs, significant time lags, and incomplete spatial coverage. To address the deficiencies of current methods in terms of objectivity and real-time monitoring, this study integrated NTL and Landsat data with deep learning techniques to develop an automation identification methodology. This study developed a novel deep learning framework by integrating the VGG16 and U-Net architectures. Experimental results demonstrate that the proposed hybrid model achieves strong performance in predicting urban socio-economic development levels, with an accuracy of 86.2%. Analyses of the seven major urban agglomerations in the Yellow River Basin (2011–2022) revealed divergent trends: the Central Plains and Shandong Peninsula Urban Agglomerations maintained continuous development throughout the 12-year period, while the other five exhibited minimal changes in socio-economic development levels.
ISSN:1010-6049
1752-0762