Affiliation:
1. Global Academy of Technology, Banglore, India.
Abstract
This literature review critically examines the utilization of CCTV cameras and real-time object detection to address the issue of littering from moving vehicles. The paper explores the core objective of identifying waste disposal instances, focusing on sophisticated image processing techniques for accurate license plate details capture. Through the integration of technology, the review discusses how the system detects and documents littering, facilitating the imposition of fines on registered vehicles. The strategic fusion of CCTV cameras and advanced image processing is analyzed for its effectiveness in deterring irresponsible waste disposal and reinforcing anti-littering regulations. The literature review contributes to a comprehensive understanding of this approach's impact on fostering a cleaner and more environmentally conscious urban environment
Reference12 articles.
1. Khandare, Shobhit, Sunil Badak, Yugandhara Sawant, and Sadiya Solkar. "Object detection based garbage collection robot (E-Swachh)." International Research Journal of Engineering and Technology (IRJET) (2018).
2. Asoba, Shreya, Shreya Supekar, Tushar Tonde, and Juned A. Siddiqui. "Advanced traffic violation control and penalty system using IoT and image processing techniques." In 2020 2nd International Conference on Innovative Mechanisms for Industry Applications (ICIMIA), pp. 554-558. IEEE, 2020.
3. Zou, Yongjie, Yongjun Zhang, Jun Yan, Xiaoxu Jiang, Tengjie Huang, Haisheng Fan, and Zhongwei Cui. "License plate detection and recognition based on YOLOv3 and ILPRNET." Signal, Image and Video Processing 16, no. 2 (2022): 473-480.
4. Charran, R. Shree, and Rahul Kumar Dubey. "Two-Wheeler Vehicle Traffic Violations Detection and Automated Ticketing for Indian Road Scenario." IEEE Transactions on Intelligent Transportation Systems 23, no. 11 (2022): 22002-22007.
5. Shahab, Sna, and Mohd Anjum. "Solid waste management scenario in india and illegal dump detection using deep learning: an AI approach towards the sustainable waste management." Sustainability 14, no. 23 (2022): 15896.