Etude comparative sur les algorithmes de détection et de reconnaissance de véhicules dans une séquence d’images
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Abstract
Road and highway safety has become a priority issue for public authorities due to the massive increase
in road accidents every year. To this effect, the detection of vehicles perceived in a video has simplified
the issue of traffic and the identification of suspect cars or vehicles. Deep learning techniques have
emerged as a powerful strategy offering an alternative solution to human vision imitation. These
techniques are based on deep learning.
This thesis falls within the domain of computer vision. Our goal is to detect vehicles in a stream of
images and classify them according to their type 'bus, car, motorcycle, truck, bicycle'. For this purpose,
we adopted the two models YOLOv5 and Faster RCNN for vehicle detection. After a comparative study
between these models, the best results were obtained by the Faster RCNN method with an accuracy
value of 89%.
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https://theses.univ-temouchent.edu.dz/opac_css/doc_num.php?explnum_id=4889
