Abstract
Real-time monitoring systems use surveillance videos to automatically detect motorcycle helmet
requirements and triple-riding violations, which protect road safety. Deep learning methods currently show practical
worth for addressing surveillance system constraints because they have developed superior capabilities in object
detection and classification. The models deliver poor results repeatedly because they are limited by low-resolution
video, together with adverse weather conditions, as well as problems from occlusions and deficient illumination
conditions. The issue of recognizing multiple individuals riding together on one motorcycle requires better solution
methods because it remains unresolved. YOLOv8 operates in real-time to detect both helmet violations and multiple
riders on vehicles using CCTV video and webcam feeds. The detection system reaches a 95% accuracy level, thereby
establishing itself as an effective monitoring method in automated traffic control. A YOLOv8 detection model serves
for detecting triple riders, along with YOLOv8-based detection of helmet violations. The model has tailored detection
skills since its training with helmet-specific data enables it to monitor properly non-helmeted riders. The system
supplies capabilities for processing video and image data, which helps it create visual violation marks for practical realworld applications. Quality evaluation of the system happens through precision and recall metrics, which measure its
reliable operation functions. The method utilizes publicly available data and self-collected information to solve
illumination conditions and issues that affect detection systems. The evolution of traffic rule enforcement systems has
improved thanks to the resolution of implementation problems. The research application proves how deep learning
transforms surveillance systems, which advances road safety through system improvements. Better traffic management
possibilities, combined with improved efficiency and innovation, enable wider expansion of safety programs in urban
areas.