Smart City Gnosys

Smart city article details

Title Multi-Camera Object Localization As A Layer Of A High-Definition Map
ID_Doc 38145
Authors Usorac S.; Bordoski D.; Lukac Z.; Samardzija D.
Year 2021
Published IEEE International Conference on Consumer Electronics - Berlin, ICCE-Berlin, 2021-November
DOI http://dx.doi.org/10.1109/ICCE-Berlin53567.2021.9720034
Abstract People use conventional maps for orientation in various environments. With the increase of traffic participant number, restrictions of conventional maps result in traffic congestion and an increased number of accidents. We could overcome such restrictions of conventional maps with High Definition (HD) maps. On top of conventional maps, HD maps provide detailed real-time information about traffic participants in monitored areas. Consequently, HD maps enable faster deployment of autonomous driving systems and provide significant improvement to Smart Cities. We can provide such additional real-time information as a result of an object detection algorithm. We propose a novel solution in developing an HD map layer by combining multiple object detection results. Traffic is monitored from multiple cameras observing vehicles and pedestrians from different points of view. We tested our solution on an urban environment, upgrading the public Geolocation map to an HD map. © 2021 IEEE.
Author Keywords HD map; Image Perspective Transformation; Localization; Multi Camera; Traffic Monitoring


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