REAL-TIME TRAFFIC SURVEILLANCE AND DETECTION USING DEEP LEARNING AND COMPUTER VISION TECHNIQUES
DOI:
https://doi.org/10.48047/cq6nt681Keywords:
Traffic Detection, Deep Learning, Computer Vision, CNN, Object Detection, YOLO, Vehicle Detection and Tracking, Intelligent Transportation SystemsAbstract
Real-time traffic surveillance has become an essential component of modern intelligent transportation systems, particularly in rapidly urbanizing environments where traffic congestion, accidents, and rule violations are increasingly common. Traditional traffic monitoring methods, which rely on manual observation or basic sensor-based systems, often lack accuracy, scalability, and
real-time responsiveness
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