How to predict on-road air pollution based on street view images and machine learning: a quantitative analysis of the optimal strategy
Hui Zhong, Di Chen, Pengqin Wang, Wenrui Wang, Shaojie Shen, Yonghong, Liu, Meixin Zhu

TL;DR
This study develops a machine learning-based strategy using street view images and mobile monitoring data to accurately predict local on-road air pollution, identifying optimal sampling and feature extraction methods.
Contribution
It introduces an optimal strategy combining street view image sampling and machine learning algorithms for precise air pollution prediction.
Findings
Machine learning methods outperform linear models in pollution estimation.
Averaging multiple street view angles improves feature accuracy.
Optimal sampling radius is 100 meters with averaging strategy.
Abstract
On-road air pollution exhibits substantial variability over short distances due to emission sources, dilution, and physicochemical processes. Integrating mobile monitoring data with street view images (SVIs) holds promise for predicting local air pollution. However, algorithms, sampling strategies, and image quality introduce extra errors due to a lack of reliable references that quantify their effects. To bridge this gap, we employed 314 taxis to monitor NO, NO2, PM2.5 and PM10 dynamically and sampled corresponding SVIs, aiming to develop a reliable strategy. We extracted SVI features from ~ 382,000 streetscape images, which were collected at various angles (0{\deg}, 90{\deg}, 180{\deg}, 270{\deg}) and ranges (buffers with radii of 100m, 200m, 300m, 400m, 500m). Also, three machine learning algorithms alongside the linear land-used regression (LUR) model were experimented with to…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Vehicle emissions and performance · Air Quality and Health Impacts
