
Free Download Udemy - AI Driver Distraction & Drowsiness Detection with Python&CV
Published 5/2025
Created by Muhammad Yaqoob G
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: All | Genre: eLearning | Language: English | Duration: 22 Lectures ( 1h 17m ) | Size: 1.12 GB
Driver Distraction and Drowsiness Detection System using Python, AI, and Computer Vision
What you'll learn
Understand the importance of driver drowsiness detection and the impact of distractions on road safety, and how AI-powered systems help mitigate these risks.
Set up a Python development environment and install libraries like OpenCV and MediaPipe for computer vision and distraction detection tasks.
Capture real-time video from a webcam and explore the State Farm Driver Distraction dataset to analyze and classify unsafe driver behaviors.
Extract facial landmarks such as eyes and mouth, and apply ResNet50 to classify ten types of driver distractions with high precision and accuracy.
Calculate Eye Aspect Ratio (EAR) and Mouth Aspect Ratio (MAR) to detect drowsiness, and use visualization to improve deep learning model accuracy.
Implement algorithms to detect fatigue like eye closure and yawning, and optimize model performance using transfer learning and fine-tuning.
Develop a Tkinter-based GUI for real-time drowsiness alerts and distraction detection using live camera feeds with clear visual indicators.
Build an interactive user interface and integrate a web-based dashboard to enhance system usability and remote monitoring capabilities.
Combine all components into a working driver monitoring system that addresses challenges like low-light, occlusions, and varying driver postures.
Troubleshoot real-world issues and deploy the system for practical use in fleet monitoring, AI safety assistance, and driver training programs.
Requirements
Basic understanding of Python programming (helpful but not mandatory).
A laptop or desktop computer with internet access[Windows OS with Minimum 4GB of RAM).
No prior knowledge of AI or Machine Learning is required-this course is beginner-friendly
Enthusiasm to learn and build practical projects using AI and IoT tools.
Description
AI-Powered Driver Monitoring System: Distraction and Drowsiness Detection using Python & Computer Vision Welcome to this all-in-one, hands-on course where you'll learn to develop an intelligent AI-powered system capable of detecting driver distractions and drowsiness in real-time using Python, Computer Vision, and Deep Learning.This course combines the power of ResNet50 for distraction detection and facial landmark-based algorithms for drowsiness detection, offering a complete solution for road safety and driver monitoring.What You'll Learn
Who this course is for
Students eager to learn AI through hands-on projects in drowsiness detection and driver behavior analysis for road safety and monitoring.
Professionals wanting to upskill in AI, ML, and Python for real-world use, including driver assistance and safety systems in transportation.
IoT enthusiasts looking to combine AI with IoT solutions for intelligent driver monitoring and real-time safety alerts in connected vehicles.
Aspiring developers and researchers aiming to build careers or AI-based solutions for accident prevention and smart mobility systems.
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