论文标题

通过图像分析管道对交通颗粒物排放的自动定量

Automated Quantification of Traffic Particulate Emissions via an Image Analysis Pipeline

论文作者

Ho, Kong Yuan, Lim, Chin Seng, Kattar, Matthena A., Boppana, Bharathi, Yu, Liya, Ooi, Chin Chun

论文摘要

众所周知,交通排放会极大地促进世界各地的空气污染,尤其是在新加坡等城市化城市中。以前已经表明,主要道路沿线的颗粒污染与高峰时段的流量增加相关,而交通排放的减少可能会导致更好的健康结果。但是,在许多情况下,获得适当的车辆交通计数仍然是手动且极其费力的。然后,这限制了一个人在长时间进行纵向监测的能力,例如,在尝试了解干预措施(例如新的交通法规(例如汽车驾驶)或计算建模)的效力时。因此,在这项研究中,我们提出并实施了一条集成的机器学习管道,该管道利用交通图像获得可以轻松与其他测量值集成的车辆计数,以促进各种研究。我们在新加坡位置获得的交通图像的开源数据集上验证该管道的效用和准确性颗粒排放的相关。

Traffic emissions are known to contribute significantly to air pollution around the world, especially in heavily urbanized cities such as Singapore. It has been previously shown that the particulate pollution along major roadways exhibit strong correlation with increased traffic during peak hours, and that reductions in traffic emissions can lead to better health outcomes. However, in many instances, obtaining proper counts of vehicular traffic remains manual and extremely laborious. This then restricts one's ability to carry out longitudinal monitoring for extended periods, for example, when trying to understand the efficacy of intervention measures such as new traffic regulations (e.g. car-pooling) or for computational modelling. Hence, in this study, we propose and implement an integrated machine learning pipeline that utilizes traffic images to obtain vehicular counts that can be easily integrated with other measurements to facilitate various studies. We verify the utility and accuracy of this pipeline on an open-source dataset of traffic images obtained for a location in Singapore and compare the obtained vehicular counts with collocated particulate measurement data obtained over a 2-week period in 2022. The roadside particulate emission is observed to correlate well with obtained vehicular counts with a correlation coefficient of 0.93, indicating that this method can indeed serve as a quick and effective correlate of particulate emissions.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源