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Highly Secure Smart Vehicle Parking System (SVPS) for Smart Cities

S. K. Kabilesh, J. Arun, N. Arisudhan, P. Kathirvel, J. Rabin, D. Mohanapriya, R. Swaranambigai

Abstract


Our main objective is to develop a fully automated car parking system without human involvement. With the world's population growing, time is of the essence, thus we must reduce the time wasted on pointless tasks like locating a parking space in a congested area and avoiding traffic jams. We have observed in the current systems that accidents can occasionally be caused by fast-moving cars in parking spaces or by irate drivers who are unable to obtain a parking space for an extended period of time. We suggest a smart and automated automobile parking model that will enable users to reserve parking places in advance, and once in the parking area, the car will be able to park itself. Our project for an automated parking system is different from others because we want to completely eliminate human interaction and install sensors on both the vehicle and the parking space so that we can use a safe and efficient parking method. As a result, our objective is to provide a completely automated, secure, dependable, and deployable parking system that can be used as the industry standard in the future.


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References


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