A Smart Violation Detection System Trained Using OpenCV and Real-Time Surveillance Data
Ms. A.Tina Victoria Assistant professor
Department of Information Technology Sathyabama Institute of Science and Technology
Chennai, India tinavictoria.a.it@sathyabama.ac.in
Madhumitha V UG Student
Department of Information Technology Sathyabama Institute of Science and Technology
Chennai, India
Madhumitha1855@gmail.com
Keerthana I UG Student
Department of Information Technology Sathyabama Institute of Science and Technology
Chennai, India keerthanai367@gmail.com
Ms. L Mary Gladence, Professor
Department of Information Technology Sathyabama Institute of Science and
Technology Chennai ,India
Marygladence.it@sathyabama.ac.in
Abstract— Safety within the railway system is the focus of the times in the wake of digital transformation. A smart violation detection system with real-time surveillance and image processing using OpenCV will be developed to detect violations in train environments, specifically targeted towards footboard travel detection. The development will be based on the Django web framework to make the interface user-friendly for passengers and railway authorities. The solution supports a secure module of online booking for trains by one-time password-based authentication in order to ensure that genuine users access the module. The moment the login is successful, the system captures the image of the passenger and uses facial recognition algorithms to estimate the person's gender as male or female and thereby connects it with the registered profile for enhancing verification accuracy. Simultaneously, real-time surveillance cameras will monitor the inside compartments of the train along with the footboard areas. Frames are captured from the camera- captured video and, with the further analysis of the frames, detection of unauthorized footboard travel or any other violation would be done with the help of OpenCV, raising automated alerts and logging incidents for further action. This intelligent system, assuredly, will enhance the safety, accountability, and effective management of railway travel. With its real-time analytics, gender detection, and access security, it should be a powerful means of bringing modernization into public transport security.
Keywords:
Smart railway violation detection using real-time surveillance, facial recognition, and OpenCV-based image processing for footboard travel prevention. The system integrates OTP authentication, gender verification, and automated alerts through a Django- powered secure platform.