Abstract
The main objective of this research is to detect helmets and seatbelts on drivers in traffic scene. This will help people follow the rules and also make sure they drive safely. Its will also help the police monitor traffic from a safe place and away from elements such as heat and rain. Moreover, this project will help increase safety for both the commuters and the police. Using this data, police may also fine the individuals breaking the law. We intend to reprimand violators by making them aware of their violations by detecting features of vehicles driven by people who not only endanger themselves but also others on the road by their actions.
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Acknowledgements
We thank our mentor Ms. Divya Jennifer D’Souza for her valuable inputs and guidance. We also extend gratitude to Dr. Niranjan N Chiplunkar, Principal, NMAM Institute of technology and Dr. Uday Kumar Reddy, Head of department, NMAM Institute of technology for their support and giving us an opportunity to conduct this research project in college.
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Saini, D., Arundekar, V., Priya, K.V., D’Souza, D.J. (2022). Identification of Helmets on Motorcyclists and Seatbelt on Four-Wheeler Drivers. In: Shetty D., P., Shetty, S. (eds) Recent Advances in Artificial Intelligence and Data Engineering. Advances in Intelligent Systems and Computing, vol 1386. Springer, Singapore. https://doi.org/10.1007/978-981-16-3342-3_8
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