AI-powered Driver Drowsiness Detection System using Computer Vision & Machine Learning for real-time driver alertness monitoring and accident prevention.
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Updated
Oct 21, 2025 - Python
AI-powered Driver Drowsiness Detection System using Computer Vision & Machine Learning for real-time driver alertness monitoring and accident prevention.
Driver Monitoring System by using deep learning model Gaze, Face detection, Face Landmark, and Head pose estimation.
A driver monitoring system.
Real-time AI Driver Drowsiness Detection using Flask, OpenCV & Dlib with live browser camera monitoring and fatigue alerts.
VisionSense is a comprehensive ROS2-based computer vision system designed for autonomous vehicles running on NVIDIA Jetson platforms with JetPack 6.2. It provides a complete perception pipeline with real-time object detection, lane detection, traffic sign recognition, stereo depth estimation, and driver monitoring capabilities.
Bantay Drive - A mobile-based driver monitoring system built with Flutter and TFLite. It detects drowsiness and distraction in real time using a hybrid deep learning model, providing escalating alerts to improve road safety. [Note: The Bantay Drive application will be released soon.]
🚨 Detect accidents in images using AI and initiate emergency responses for smarter city and traffic management.
Real-time driver yawn detection system using Mediapipe and YOLOv8 — an ADAS Driver Monitoring module that triggers alerts based on drowsiness level.
A teen driver monitoring system built using Arduino Nano
FaceMap AI is an intelligent computer vision application designed to enhance road safety by detecting driver drowsiness in real time. The system leverages MediaPipe Face Mesh and Deep Learning techniques to analyze facial landmarks from live video streams and identify signs of fatigue before they become dangerous.
A monthly updated and 100% open-sourced fork of openpilot with clean commits dedicated to serve the openpilot community! FrogPilot is shaped by user and developer contributions, emphasizing collaborative, community-driven development to provide a bleeding-edge openpilot experience for everyone!
Real-Time Driver Monitoring System using OpenCV, MediaPipe, Drowsiness Detection, Yawning Detection, Gaze Tracking and Head Pose Estimation.
A hybrid computer vision–based driver drowsiness detection system using MediaPipe Face Mesh and Dlib facial landmarks for real-time eye closure and yawn detection, featuring adaptive EAR calibration, audio alerts, SMS notifications, and image capture.
A real-time driver drowsiness detection system using computer vision to monitor eye movements. It alerts drivers with a buzzer when signs of fatigue are detected, helping prevent accidents.
🛡️ GuardianDrive AI: The Ultimate Driver Drowsiness Detection & Drunk Driver Alert System using Python, OpenCV & MediaPipe. Features Real-time Anti-Sleep Alarm, Intoxication Detection, IoT Alerts & Insurance Telematics. Production-ready for all face types. 🚀
driver monitoring system
The Author has written this article on Driver Monitoring system. If employed in the system, it reduces the occurrences of road accidents.
Driver-safety prototype combining drowsiness detection, lane detection, parking assistance, and Raspberry Pi–ESP32 control.
Admin website for managing drivers
Real-time driver drowsiness detection system using facial landmarks, computer vision, and ensemble ML models to trigger fatigue alerts.
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