2023
DOI: 10.14500/aro.11327
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Real-time Traffic Monitoring System Based on Deep Learning and YOLOv8

Saif B. Neamah,
Abdulamir A. Karim

Abstract: Computer vision applications are important nowadays because they provide solutions to critical problems that relate to traffic in a cost-effective manner to reduce accidents and preserve lives. This paper proposes a system for real-time traffic monitoring based on cutting-edge deep learning techniques through the state-of-the-art you-only-look-once v8 algorithm, benefiting from its functionalities to provide vehicle detection, classification, and segmentation. The proposed work provides various important traff… Show more

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Cited by 6 publications
(1 citation statement)
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“…[19]. The process unfolds as follows: Initial Video Input: The process starts with the acquisition of raw video footage from intersection cameras, capturing real-time vehicle movements in varying traffic scenarios. Processing with YOLO v8 DNN Model: Raw video data is analyzed through the YOLO v8 Deep Neural Network (DNN) model.…”
mentioning
confidence: 99%
“…[19]. The process unfolds as follows: Initial Video Input: The process starts with the acquisition of raw video footage from intersection cameras, capturing real-time vehicle movements in varying traffic scenarios. Processing with YOLO v8 DNN Model: Raw video data is analyzed through the YOLO v8 Deep Neural Network (DNN) model.…”
mentioning
confidence: 99%