Abstract
Vehicle automation is of interest to researchers; there are many works done in this field, and many things have been achieved in all those researches in this field; this paper represents the chronological order of the details. This paper helps to understand the trend of vehicle automation. The research on vehicle automation starts in the 1920s, when the first vehicle was controlled using a radio controller and in subsequent decades, there have seen many attempts for developing an electric vehicle. The next big milestone was achieved in the 1960s when the first vehicle was automated using vision-guided technology. With the vision-guided system, many semi-automated systems were made which was the base of a fully autonomous vehicle. Automation was done to reduce human work and reduce human error in driving and following. This also saves time and the efficiency of the work is also increased. With the demand for more efficient and easier to use vehicles, this method was introduced. With this mechatronics system, one can achieve full automation driving in less than a decade. In this project, the objective is to create an easy to install system where vehicle can run autonomously without any human interaction with high precision. It can track the object and determine its path. A color tracking system is to be installed to decide the moving path trajectory.
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Sharma, S., Khan, S.A., Sharma, S., Gupta, V., Rajput, Y., Singh, S.P. (2023). A Review of Vehicle Automation Using Artificial Intelligence. In: Sharma, R., Kannojiya, R., Garg, N., Gautam, S.S. (eds) Advances in Engineering Design. FLAME 2022. Lecture Notes in Mechanical Engineering. Springer, Singapore. https://doi.org/10.1007/978-981-99-3033-3_51
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