Intelligent Transportation Systems: Fusing Computer Vision and Sensor Networks for Traffic Management

Main Article Content

Preeti P. Kamble, Chandrakant P.Divate, M. N. Mestri, P. S. Langde, M. A. Bote,

Abstract

Intelligent Transportation Systems (ITS) represent a pivotal approach to addressing the complex challenges posed by modern-day urban mobility. By seamlessly integrating computer vision and sensor networks, ITS offer a comprehensive solution for traffic management, safety enhancement, and environmental sustainability. This paper delves into the synergistic fusion of computer vision and sensor networks within the framework of ITS, emphasizing their collective role in optimizing traffic flow, mitigating congestion, and enhancing overall road safety. Leveraging cutting-edge technologies such as machine learning, image processing, and Internet of Things (IoT), ITS harness real-time data acquisition and analytics capabilities to facilitate informed decision-making by transportation authorities. Through a comprehensive review of recent advancements, challenges, and opportunities, this paper illuminates the transformative potential of integrating computer vision and sensor networks in ITS. Furthermore, it presents compelling case studies and exemplary applications, showcasing the tangible benefits of this fusion across diverse traffic management scenarios. Ultimately, this paper advocates for the widespread adoption of integrated ITS solutions as a means to usher in a new era of smarter, safer, and more sustainable urban transportation systems.

Article Details

How to Cite
Preeti P. Kamble. (2024). Intelligent Transportation Systems: Fusing Computer Vision and Sensor Networks for Traffic Management. International Journal on Recent and Innovation Trends in Computing and Communication, 11(1), 266–274. Retrieved from https://ijritcc.org/index.php/ijritcc/article/view/10584
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