Beyond here and now: Evaluating pollution estimation across space and time from street view images with deep learning

Advances in computer vision, driven by deep learning, allows for the inference of environmental pollution and its potential sources from images. The spatial and temporal generalisability of image-based pollution models is crucial in their real-world application, but is currently understudied, partic...

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Veröffentlicht in:The Science of the total environment 2023-12, Vol.903, p.166168-166168, Article 166168
Hauptverfasser: Nathvani, Ricky, D., Vishwanath, Clark, Sierra N., Alli, Abosede S., Muller, Emily, Coste, Henri, Bennett, James E., Nimo, James, Moses, Josephine Bedford, Baah, Solomon, Hughes, Allison, Suel, Esra, Metzler, Antje Barbara, Rashid, Theo, Brauer, Michael, Baumgartner, Jill, Owusu, George, Agyei-Mensah, Samuel, Arku, Raphael E., Ezzati, Majid
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Sprache:eng
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Zusammenfassung:Advances in computer vision, driven by deep learning, allows for the inference of environmental pollution and its potential sources from images. The spatial and temporal generalisability of image-based pollution models is crucial in their real-world application, but is currently understudied, particularly in low-income countries where infrastructure for measuring the complex patterns of pollution is limited and modelling may therefore provide the most utility. We employed convolutional neural networks (CNNs) for two complementary classification models, in both an end-to-end approach and as an interpretable feature extractor (object detection), to estimate spatially and temporally resolved fine particulate matter (PM2.5) and noise levels in Accra, Ghana. Data used for training the models were from a unique dataset of over 1.6 million images collected over 15 months at 145 representative locations across the city, paired with air and noise measurements. Both end-to-end CNN and object-based approaches surpassed null model benchmarks for predicting PM2.5 and noise at single locations, but performance deteriorated when applied to other locations. Model accuracy diminished when tested on images from locations unseen during training, but improved by sampling a greater number of locations during model training, even if the total quantity of data was reduced. The end-to-end models used characteristics of images associated with atmospheric visibility for predicting PM2.5, and specific objects such as vehicles and people for noise. The results demonstrate the potential and challenges of image-based, spatiotemporal air pollution and noise estimation, and that robust, environmental modelling with images requires integration with traditional sensor networks. [Display omitted] •Street-view image based deep learning models can extend pollution estimation.•Image and feature-based models are complimentary in flexibility and interpretability.•Noise and air models use specific features (e.g. market umbrellas and haze).•Images and sensor networks can broaden pollution monitoring in African cities.•Data collection for model development should prioritise spatial representativeness.
ISSN:0048-9697
1879-1026
DOI:10.1016/j.scitotenv.2023.166168