Amisha Vartak,
Himanshu Ghode,
Aniket Kashid,
Prajakta Jadhav,
- Student, Department of Computer Engineering Vishwaniketan’s Institute of Management Entrepreneurship and Engineering Technology (Vimeet), Khalapur, Maharashtra, India
- Student, Department of Computer Engineering Vishwaniketan’s Institute of Management Entrepreneurship and Engineering Technology (Vimeet), Khalapur, Maharashtra, India
- Student, Department of Computer Engineering Vishwaniketan’s Institute of Management Entrepreneurship and Engineering Technology (Vimeet), Khalapur, Maharashtra, India
- Assistant Professor, Department of Computer Engineering Vishwaniketan’s Institute of Management Entrepreneurship and Engineering Technology (Vimeet), Khalapur, Maharashtra, India
Abstract
Security concerns have become paramount as there is rise in crime rates in crowded events and isolated areas. Abnormal event detection and monitoring system, utilizing computer vision, are crucial for tackling these challenges. In parallel reducing mortality rates from accidents by ensuring timely emergency response in essential This paper presents the implementation of automatic weapon detection and accident detection. In weapon detection YOLO v4, Convolutional Neural Networks (CNN), and Faster RCNN algorithms were used. Results indicate both algorithms provide good accuracy, through their real-world application depends on speed and precision. In Accident detection keras model, CNN, RCNN were used This paper also explores the development of Weapon Detection and Accident Detection and Alert System using software to detect weapons and vehicle accidents. In a camera prototype GPS modules provide the accident location, and GSM sends email notifications. This system ensures instant alerts to emergency services in case of an accident, delivering real-time updates on the vehicle’s location. By reducing response time, it enhances the chances of timely medical intervention and increases survival rates.
Keywords: Convolutional neural network, single shot detection, YOLOv4, region convolutional neural networks (R-CNN), object detection
[This article belongs to Research & Reviews: A Journal of Embedded System & Applications ]
Amisha Vartak, Himanshu Ghode, Aniket Kashid, Prajakta Jadhav. Advance Surveillance System Integrated with Weapon Detection & Accident Detection. Research & Reviews: A Journal of Embedded System & Applications. 2025; 13(01):48-55.
Amisha Vartak, Himanshu Ghode, Aniket Kashid, Prajakta Jadhav. Advance Surveillance System Integrated with Weapon Detection & Accident Detection. Research & Reviews: A Journal of Embedded System & Applications. 2025; 13(01):48-55. Available from: https://journals.stmjournals.com/rrjoesa/article=2025/view=0
References
- Jain H, Vikram A, Kashyap A, Jain A. Weapon detection using artificial intelligence and deep learning for security applications. In2020 International Conference on Electronics and Sustainable Communication Systems (ICESC) 2020 Jul 2 (pp. 193-198). IEEE.
- Aditya DB, NARESH N, Kumar KV, Raju BG. Accident Detection and Alert System. Journal of Engineering Sciences. 2023;14(06).
- Gomathy CK, Rohan K, Reddy BM, Geetha V. Accident detection and alert system. Journal of Engineering, Computing & Architecture. 2022 Mar;12(3):32-43.
- Parameswaran S, Anusuya P, Dhivya M, Banu AH, Kumar DN. Automatic vehicle accident detection and messaging system. International Journal of engineering research & technology (IJERT) coco dancer. 2016;4(11).
- Singh H, Hand EM, Alexis K. Anomalous motion detection on highway using deep learning. In2020 IEEE international conference on image processing (ICIP) 2020 Oct 25 (pp. 1901-1905). IEEE.
- Singh B, Singh D, Singh G, Sharma N, Sibbal V. Motion detection for video surveillance. In2014 International Conference on Signal Propagation and Computer Technology (ICSPCT 2014) 2014 Jul 12 (pp. 578-584). IEEE.
- Parsa AB, Taghipour H, Derrible S, Mohammadian AK. Real-time accident detection: Coping with imbalanced data. Accident Analysis & Prevention. 2019 Aug 1;129:202-10.
- Ghosh S, Sunny SJ, Roney R. Accident detection using convolutional neural networks. In2019 international conference on data science and communication (IconDSC) 2019 Mar 1 (pp. 1-6). IEEE.
- Bari AS, Falalu MA, Umar MA, Sulaiman YY, Gamble AM, Baballe MA. Accident Detection and Alerting Systems: A Review. Global Journal of Research in Engineering & Computer. 2022 Jul..
- Kattukkaran N, George A, Haridas TM. Intelligent accident detection and alert system for emergency medical assistance. In2017 international conference on computer communication and informatics (ICCCI) 2017 Jan 5 (pp. 1-6). IEEE.

Research & Reviews: A Journal of Embedded System & Applications
| Volume | 13 |
| Issue | 01 |
| Received | 02/02/2025 |
| Accepted | 17/02/2025 |
| Published | 18/03/2025 |
| Publication Time | 44 Days |
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