Detecting traffic using OpenCV and YOLO and tracking the vehicles for counting using Sort
-
Updated
Dec 5, 2020 - Python
Detecting traffic using OpenCV and YOLO and tracking the vehicles for counting using Sort
Discover the future of urban mobility with the City Sense which is a UIT Data Science Traffic Application for Smart Cities. Our cutting-edge solution revolutionizes the way cities manage traffic, enhancing the quality of life for residents and fostering sustainable urban development.
Deteção de veiculos, tracking de veículo e estimador de velocidade
AI-based Smart Traffic Violation Detection using YOLOv8 for real-time helmet and signal violation detection
A deep learning-based traffic object detection system using YOLOv8. The model detects vehicles and traffic signs such as cars, trucks, buses, traffic lights, and stop signs, providing bounding boxes and confidence scores. Trained on a filtered dataset and evaluated on real-world images.
Successfully developed an object detection model using Faster R-CNN to detect vehicles and traffic-related objects in real-time road scenes, supporting smart traffic monitoring and surveillance applications.
This project demonstrates a simple yet powerful application of the YOLOv8 (You Only Look Once) object detection model for identifying various traffic-related objects.
Interactive traffic analytics dashboard powered by YOLOv8 vehicle detection, built with Streamlit and Plotly
Training detection models (RetinaNet and SSD) to detect road objects, then applying a model to real world traffic video from Moscow.
Application for the control of a system of multiple robots interacting and coordinating tasks, traffic conflicts and navigation in a mining environment
This project was developed as part of the PIDEV – 4th Year Engineering Program (TWIN) at Esprit School of Engineering – Tunisia (Academic Year 2025–2026).
This project was developed at Esprit School of Engineering – Tunisia as part of the PIDEV program (Academic Year 2025–2026). Technologies: React, Spring Boot, AI, YOLOv8.
Add a description, image, and links to the traffic-detection topic page so that developers can more easily learn about it.
To associate your repository with the traffic-detection topic, visit your repo's landing page and select "manage topics."