John Clement S. Escobañez,Mark James G. Cayabyab,Julie Anne Angeles-Crystal
标识
DOI:10.1109/icict62343.2024.00088
摘要
In cities worldwide, escalating traffic congestion due to surging populations and vehicles presents a critical challenge, causing delays, stress, increased fuel consumption, and air pollution, with megacities bearing the brunt. The pressing need to dynamically assess real-time road traffic density for effective signal control and traffic management becomes paramount. To address this, our Smart Traffic Management System employs Convolutional Neural Networks (CNNs) and CCTV cameras. This innovative approach enables precise traffic density calculations, facilitating adaptive traffic signal control based on vehicle density. Consequently, congestion is mitigated, ensuring expedited transit and reduced pollution. By utilizing CCTV Cameras, integrating Convolutional Neural Networks, and harnessing Computer Vision's power, our solution revolutionizes urban mobility. In conclusion, our Smart Traffic Management System presents a holistic, technology-driven solution to alleviate traffic congestion, enhancing urban mobility and environmental sustainability.