Data Cleaning to fine-tune a Transfer Learning approach for Air Quality Prediction.

International Smart Cities Conference (ISC2)(2022)

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摘要
Air pollution is a serious environmental danger to people, specifically those who live in urbanised regions. Air pollution is also responsible for the climate crisis. Latest researches have shown the efficiency of early alert procedures that permits citizens to decrease their exposure to air pollution. Hence, monitoring air quality has turned into an essential need in most cities. Circulation, electricity, combustible uses, and various factors contribute to air pollution. Air quality ground stations are placed across most countries to record diverse air pollutants (including NO 2 ), but they have a limited number, constraining therefore the accuracy of ground-level NO 2 at high temporal and spatial resolutions. Conversely, satellite remote sensing data measures NO 2 densities at a global scale. This paper presents a Data Cleaning technique for satellite images so Transfer Learning could be applied in a further step to estimate NO 2 concentrations at Luxembourg with high spatial resolutions based on a pretrained Residual Network 50 (ResNet-50).
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关键词
transfer learning approach,cleaning,prediction,fine-tune
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