1. Using deep transfer learning and satellite imagery to estimate urban air quality in data-poor regions.
- Author
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Yadav, Nishant, Sorek-Hamer, Meytar, Von Pohle, Michael, Asanjan, Ata Akbari, Sahasrabhojanee, Adwait, Suel, Esra, E Arku, Raphael, Lingenfelter, Violet, Brauer, Michael, Ezzati, Majid, Oza, Nikunj, and Ganguly, Auroop R.
- Subjects
REMOTE-sensing images ,AIR quality ,DEEP learning ,AIR quality monitoring ,CITIES & towns ,URBAN pollution - Abstract
Urban air pollution is a critical public health challenge in low-and-middle-income countries (LMICs). At the same time, LMICs tend to be data-poor, lacking adequate infrastructure to monitor air quality (AQ). As LMICs undergo rapid urbanization, the socio-economic burden of poor AQ will be immense. Here we present a globally scalable two-step deep learning (DL) based approach for AQ estimation in LMIC cities that mitigates the need for extensive AQ infrastructure on the ground. We train a DL model that can map satellite imagery to AQ in high-income countries (HICs) with sufficient ground data, and then adapt the model to learn meaningful AQ estimates in LMIC cities using transfer learning. The trained model can explain up to 54% of the variation in the AQ distribution of the target LMIC city without the need for target labels. The approach is demonstrated for Accra in Ghana, Africa, with AQ patterns learned and adapted from two HIC cities, specifically Los Angeles and New York. • Poor urban air quality (AQ) is a health hazard, especially in data-poor regions. • Satellite imagery (SI) and machine learning (ML) present an exciting opportunity. • We adapt ML-AQ models from data-rich to data-poor regions. • Our approach is globally scalable. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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