CVAIAug 1, 2023

A Satellite Imagery Dataset for Long-Term Sustainable Development in United States Cities

arXiv:2308.00465v19 citationsh-index: 47
Originality Synthesis-oriented
AI Analysis

This dataset supports urban policymakers and researchers in advancing SDG-related studies, particularly for long-term and multi-scale monitoring, but it is incremental as it applies existing methods to new data.

The authors tackled the lack of a comprehensive dataset for monitoring sustainable development goals (SDGs) in U.S. cities by developing a satellite imagery dataset covering 100 cities from 2014 to 2023 with 25 indicators, using deep learning models to collect and analyze data for poverty, health, education, inequality, and living environment.

Cities play an important role in achieving sustainable development goals (SDGs) to promote economic growth and meet social needs. Especially satellite imagery is a potential data source for studying sustainable urban development. However, a comprehensive dataset in the United States (U.S.) covering multiple cities, multiple years, multiple scales, and multiple indicators for SDG monitoring is lacking. To support the research on SDGs in U.S. cities, we develop a satellite imagery dataset using deep learning models for five SDGs containing 25 sustainable development indicators. The proposed dataset covers the 100 most populated U.S. cities and corresponding Census Block Groups from 2014 to 2023. Specifically, we collect satellite imagery and identify objects with state-of-the-art object detection and semantic segmentation models to observe cities' bird's-eye view. We further gather population, nighttime light, survey, and built environment data to depict SDGs regarding poverty, health, education, inequality, and living environment. We anticipate the dataset to help urban policymakers and researchers to advance SDGs-related studies, especially applying satellite imagery to monitor long-term and multi-scale SDGs in cities.

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