Scalable deep learning to identify brick kilns and aid regulatory capacity.
Jihyeon LeeNina R BrooksFahim TajwarMarshall BurkeStefano ErmonDavid B LobellDebashish BiswasStephen P LubyPublished in: Proceedings of the National Academy of Sciences of the United States of America (2021)
Improving compliance with environmental regulations is critical for promoting clean environments and healthy populations. In South Asia, brick manufacturing is a major source of pollution but is dominated by small-scale, informal producers who are difficult to monitor and regulate-a common challenge in low-income settings. We demonstrate a low-cost, scalable approach for locating brick kilns in high-resolution satellite imagery from Bangladesh. Our approach identifies kilns with 94.2% accuracy and 88.7% precision and extracts the precise GPS coordinates of every brick kiln across Bangladesh. Using these estimates, we show that at least 12% of the population of Bangladesh (>18 million people) live within 1 km of a kiln and that 77% and 9% of kilns are (illegally) within 1 km of schools and health facilities, respectively. Finally, we show how kilns contribute up to 20.4 μg/[Formula: see text] of [Formula: see text] (particulate matter of a diameter less than 2.5 μm) in Dhaka when the wind blows from an unfavorable direction. We document inaccuracies and potential bias with respect to local regulations in the government data. Our approach demonstrates how machine learning and Earth observation can be combined to better understand the extent and implications of regulatory compliance in informal industry.
Keyphrases
- particulate matter
- low cost
- machine learning
- air pollution
- deep learning
- human health
- high resolution
- transcription factor
- risk assessment
- big data
- healthcare
- smoking cessation
- public health
- artificial intelligence
- heavy metals
- human milk
- genome wide
- electronic health record
- climate change
- preterm infants
- convolutional neural network
- dna methylation
- social media
- data analysis