Description Title: Neural ITS: A Real-Time Pipeline for High-Fidelity Traffic Analytics Author: Dr. Mustafa Omer Shoieb Mohammed Overview: This research presents a high-performance, non-invasive computer vision framework for automated traffic monitoring. The pipeline integrates YOLOv8 for state-of-the-art object detection with DeepSORT for robust multi-object tracking (MOT). Technical Highlights: Precision: Achieved 96.5% mAP in vehicle classification and detection. Performance: Optimized for real-time deployment, exceeding 30 FPS on RTSP-enabled infrastructure. Innovation: Features a "Virtual Gate" spatial counting logic to eliminate duplicate counts and ensure granular flow quantification. Scalability: Specifically architected for Smart City integration and AI-driven infrastructure management.
MUSTAFA OMER SHOIEB MOHAMMED (Sat,) studied this question.