Abstract
With the advancement of intelligent vehicles, people are gaining interest in the field of Intelligent Transport System (ITS). ITS plays a vital role in the development of smart cities that are being developed with higher accuracy. Autonomous vehicle technology is projected to improvise travel costs and congestion, decrease road incidents, and also alleviate climate change. Autonomous vehicles would need close human–computer interacting skills to recognize these advantages. However little progress has been made in contact between humans and automated vehicles in road traffic scenarios. This paper focuses on analyzing vehicle drivers and pedestrians while using electronic gadgets on roads. Moreover, it also discusses various collision prevention approaches used in the field of ITS.
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Altaf, I., Kaul, A. (2022). A Survey on Autonomous Vehicles in the Field of Intelligent Transport System. In: Mandal, J.K., Hinchey, M., Sen, S., Biswas, P. (eds) Applications of Networks, Sensors and Autonomous Systems Analytics. Studies in Autonomic, Data-driven and Industrial Computing. Springer, Singapore. https://doi.org/10.1007/978-981-16-7305-4_2
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