Title :
Air Pollution and Fog Detection through Vehicular Sensors
Author :
Sallis, Philip ; Dannheim, Clemens ; Icking, Christian ; Maeder, Markus
Author_Institution :
Auckland Univ. of Technol., Auckland, New Zealand
Abstract :
We describe a method for the automatic recognition of air pollution and fog from a vehicle. Our system consists of sensors to acquire main data from cameras as well as from Light Detection and Recognition (LIDAR) instruments. We discuss how this data can be collected, analyzed and merged to determine the degree of air pollution or fog. Such data is essential for control systems of moving vehicles in making autonomous decisions for avoidance. Backend systems need such data for forecasting and strategic traffic planning and control. Laboratory based experimental results are presented for weather conditions like air pollution and fog, showing that the recognition scenario works with better than adequate results. This paper demonstrates that LIDAR technology, already onboard for the purpose of autonomous driving, can be used to improve weather condition recognition when compared with a camera only system. We conclude that the combination of a front camera and a LIDAR laser scanner is well suited as a sensor instrument set for air pollution and fog recognition that can contribute accurate data to driving assistance and weather alerting-systems.
Keywords :
air pollution; atmospheric measuring apparatus; atmospheric techniques; cameras; data analysis; driver information systems; fog; optical radar; remote sensing by laser beam; remote sensing by radar; road traffic control; road vehicles; LIDAR laser scanner; LIDAR technology; air pollution; assistance-system; automatic recognition; autonomous decisions; autonomous driving; backend systems; control systems; fog detection; fog recognition; front camera; light detection and recognition instruments; recognition scenario; sensor instrument; strategic traffic control; strategic traffic planning; vehicular sensors; weather alerting-system; weather condition recognition; weather conditions; Air pollution; Atmospheric measurements; Laser radar; Meteorology; Pollution measurement; Sensors; Vehicles; LIDAR; air pollution detection; air pollution forecasting services; colaborative driver assistant functions; fog detection; remote sensing; spatial resolution; weather detection;
Conference_Titel :
Modelling Symposium (AMS), 2014 8th Asia
Print_ISBN :
978-1-4799-6486-4
DOI :
10.1109/AMS.2014.43