kingers Posted May 29 Report Share Posted May 29 Real-Time Ai Face Mask Detection Using Python & Opencv Published 5/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 383.78 MB | Duration: 0h 40mReal-Time Mask Detection: How AI Helps Enforce Safety Measures with Python & Computer Vision. What you'll learn Understand the fundamentals of face mask detection using deep learning models and its role in ensuring public health safety through automated monitoring. Set up a Python development environment with essential libraries, including OpenCV for image processing and Tkinter for real-time video streaming on the web. Explore the YOLOv11 model, optimized for accurate and efficient face mask detection in real-time video streams. Utilize a Roboflow dataset to train and evaluate the model, ensuring diverse and high-quality image data for improved detection accuracy. Learn preprocessing techniques, such as image normalization, resizing, and augmentation, to enhance model performance and ensure compatibility with YOLOv11. Implement real-time visualization by annotating video frames with bounding boxes, class labels, and confidence scores for face mask detection. Address challenges like detecting partially visible faces, handling different lighting conditions, and recognizing various mask-wearing patterns. Develop a user-friendly application using Tkinter to display live video feeds with real-time mask detection capabilities. Optimize model deployment for real-time use, ensuring low latency in video processing and accurate detection of masked and unmasked individuals. Apply the developed system in real-world scenarios such as public spaces, hospitals, airports, and workplaces to enhance safety and compliance monitoring. 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. [b]Description[/b] Welcome to the AI-Powered Face Mask Detection System with YOLOv11 and Tkinter! In this hands-on course, you'll learn how to build a real-time face mask detection system using the powerful YOLOv11 model for face mask classification and a Tkinter-based web framework for live video streaming and visualization.This course focuses on leveraging YOLOv11 for detecting individuals wearing or not wearing masks and integrating a real-time video stream using Tkinter. By the end of the course, you'll have developed a complete system that provides live face mask detection, accessible through an interactive GUI.What You'll Learn:● Set up your Python development environment and install essential libraries like OpenCV, Tkinter, YOLOv11, and supporting tools.● Use the pre-trained YOLOv11 model to detect individuals and classify their mask-wearing status in real-time.● Preprocess video streams and images to enhance model performance, ensuring accurate detection across different lighting conditions and facial orientations.● Design and implement a desktop application using Tkinter to visualize detection results, displaying live annotations and classification labels.● Optimize detection accuracy by handling challenges such as partial occlusions, face angles, and environmental variations.● Improve real-time performance for fast and efficient processing of live video streams.● Deploy the system for use in various applications such as workplace safety monitoring, public health compliance, and smart surveillance.Enroll today and start building your Real-Time Mask Detection: How AI Helps Enforce Safety Measures ! Overview Section 1: Introduction to Face Mask Detection and Recognition Lecture 1 Course Introduction and Features Section 2: Environment Setup for Python Development Lecture 2 Installing Python Lecture 3 VS Code Setup for Python Development Section 3: Face Mask Detection System Project Overview Lecture 4 Face Mask Detection Section 4: Google Drive Mount Lecture 5 Google Drive Mount Section 5: Face Mask Detection Dataset Download Lecture 6 Face Mask Detection Dataset Download Section 6: Dataset Visualization Lecture 7 Dataset Visualization Section 7: Ultralytics Installation & Setting Up YOLOv11 for Mask Detection Lecture 8 Ultralytics Installation & Setting Up YOLOv11 for Mask Detection Section 8: YOLOv11 Model Training for Mask Detection Lecture 9 YOLOv11 Model Training for Mask Detection Section 9: Packages Explanation Lecture 10 Packages Explanation Section 10: Model Inference Code Explanation Lecture 11 Model Inference Code Explanation Section 11: Tkinter Implementation Lecture 12 Tkinter Implementation Section 12: Code Execution Lecture 13 Code Execution Section 13: Wrapping Up Lecture 14 Course Wrap-Up Students looking to dive into AI and learn practical applications in Face Mask Detection using the pre-trained YOLOv11 model and computer vision techniques.,Working professionals wanting to upskill in AI, Machine Learning, and Python programming for real-world applications in health and safety compliance.,IoT enthusiasts who want to integrate AI-powered face mask detection into smart surveillance and IoT-based monitoring systems.,Aspiring developers aiming to build a career in AI, machine learning, or computer vision by working on real-time detection and monitoring projects.DDownloadhttps://ddownload.com/y0jp7tpy3iaj/yxusj.RealTime.AI.Face.Mask.Detection.Using.Python.OpenCV.rarRapidGatorhttps://rapidgator.net/file/6ac7e67214a8cf0d834cc1c410751464/yxusj.RealTime.AI.Face.Mask.Detection.Using.Python.OpenCV.rarNitroFlarehttps://nitroflare.com/view/2C0F699E14EA55F/yxusj.RealTime.AI.Face.Mask.Detection.Using.Python.OpenCV.rar Link to comment Share on other sites More sharing options...
Recommended Posts
Please sign in to comment
You will be able to leave a comment after signing in
Sign In Now