TY - JOUR
T1 - Nightlight as a proxy of economic indicators
T2 - Fine-grained gdp inference around mainland china via attention-augmented cnn from daytime satellite imagery
AU - Liu, Haoyu
AU - He, Xianwen
AU - Bai, Yanbing
AU - Liu, Xing
AU - Wu, Yilin
AU - Zhao, Yanyun
AU - Yang, Hanfang
N1 - Funding Information:
This research was partly funded by the Fundamental Research Funds for the Central Universities, and the Research Funds of Renmin University of China (17XNLG09), fund for building world-class universities (disciplines) of Renmin University of China.
Publisher Copyright:
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.
PY - 2021/6/1
Y1 - 2021/6/1
N2 - The official method of collecting county-level GDP values in the Chinese Mainland relies mainly on administrative reporting data and suffers from high costs of time, money, and human labor. To date, a series of studies have been conducted to generate fine-grained maps of socioeconomic indicators from the easily accessed remote sensing data and achieved satisfactory results. This paper proposes a transfer learning framework that regards nightlight intensities as a proxy of economic activity degrees to estimate county-level GDP around the Chinese Mainland. In the framework, paired daytime satellite images and nightlight intensity levels were applied to train a VGG-16 architecture, and the output features at a specific layer, after dimensional reduction and statistics calculation, were fed into a simple regressor to estimate county-level GDP. We trained the model with data of 2017 and utilized it to predict county-level GDP of 2018, achieving an R-squared of 0.71. Furthermore, the results of gradient visualization confirmed the validity of the proposed framework qualitatively. To the best of our knowledge, this is the first time that county-level GDP values around the Chinese Mainland have been estimated from both daytime and nighttime remote sensing data relying on attention-augmented CNN. We believe that our work will shed light on both the evolution of fine-grained socioeconomic surveys and the application of remote sensing data in economic research.
AB - The official method of collecting county-level GDP values in the Chinese Mainland relies mainly on administrative reporting data and suffers from high costs of time, money, and human labor. To date, a series of studies have been conducted to generate fine-grained maps of socioeconomic indicators from the easily accessed remote sensing data and achieved satisfactory results. This paper proposes a transfer learning framework that regards nightlight intensities as a proxy of economic activity degrees to estimate county-level GDP around the Chinese Mainland. In the framework, paired daytime satellite images and nightlight intensity levels were applied to train a VGG-16 architecture, and the output features at a specific layer, after dimensional reduction and statistics calculation, were fed into a simple regressor to estimate county-level GDP. We trained the model with data of 2017 and utilized it to predict county-level GDP of 2018, achieving an R-squared of 0.71. Furthermore, the results of gradient visualization confirmed the validity of the proposed framework qualitatively. To the best of our knowledge, this is the first time that county-level GDP values around the Chinese Mainland have been estimated from both daytime and nighttime remote sensing data relying on attention-augmented CNN. We believe that our work will shed light on both the evolution of fine-grained socioeconomic surveys and the application of remote sensing data in economic research.
KW - Arbitrary area representation
KW - Attention-augmented CNN
KW - Daytime satellite imagery
KW - Fine-grained GDP estimation
KW - Nightlight
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U2 - 10.3390/rs13112067
DO - 10.3390/rs13112067
M3 - Article
AN - SCOPUS:85107361175
SN - 2072-4292
VL - 13
JO - Remote Sensing
JF - Remote Sensing
IS - 11
M1 - 2067
ER -