2024
DOI: 10.3233/atde240029
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Real-Time Idling Vehicles Detection Using Combined Audio-Visual Deep Learning

Xiwen Li,
Tristalee Mangin,
Surojit Saha
et al.

Abstract: Combustion vehicle emissions contribute to poor air quality and release greenhouse gases into the atmosphere, and vehicle pollution has been associated with numerous adverse health effects. Roadways with extensive waiting and/or passenger drop-off, such as schools and hospital drop-off zones, can result in a high incidence and density of idling vehicles. This can produce micro-climates of increased vehicle pollution. Thus, the detection of idling vehicles can be helpful in monitoring and responding to unnecess… Show more

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