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    Ai Human Intrusion & Object Detection With Yolov7, Python&Cv

    Posted By: ELK1nG
    Ai Human Intrusion & Object Detection With Yolov7, Python&Cv

    Ai Human Intrusion & Object Detection With Yolov7, Python&Cv
    Published 5/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 628.69 MB | Duration: 0h 42m

    Intelligent Human Intrusion & Object Detection System using YOLOv7, Python & Computer Vision

    What you'll learn

    Learn object detection fundamentals and its applications in intrusion detection, surveillance, and real-world domains using AI and computer vision.

    Set up a Python environment with essential libraries like Tkinter, OpenCV, and PyTorch for computer vision and object detection tasks.

    Understand object detection concepts and how they’re used in monitoring unauthorized intrusions via video streams in real-time scenarios.

    Use YOLOv8 and YOLOv7-Tiny models for accurate, real-time object and human intrusion detection using lightweight and efficient algorithms.

    Load and configure YOLOv8 and YOLOv7-Tiny pre-trained weights to enable real-time, high-accuracy detection of objects and intruders.

    Preprocess video streams and images to integrate smoothly with YOLO models for real-time monitoring and effective object detection.

    Write Python scripts to detect objects and intruders, extracting bounding boxes, class labels, and confidence scores for interpretation.

    Visualize detection results by drawing bounding boxes, adding labels, and showing confidence scores on video frames for better insight.

    Optimize YOLOv7-Tiny for real-time performance on devices with limited resources without compromising detection speed or accuracy.

    Tackle challenges like low-light detection, occlusions, motion blur, small or overlapping objects in object and intrusion detection.

    Apply AI-based intrusion detection in restricted zones, industries, homes, offices, and public places to improve safety and surveillance.

    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

    Welcome to the Real-Time Intrusion & Object Detection with YOLOv8, YOLOv7-Tiny, and Python Course! In this comprehensive hands-on course, you'll learn how to build real-time human intrusion detection and object detection systems using the powerful YOLOv8 and YOLOv7-Tiny algorithms, Python, and Tkinter. This course combines the strengths of AI and computer vision to help you design efficient and interactive detection systems for various real-world applications.What You’ll Learn:Set Up Your Python Development Environment: Learn to set up your development environment and install essential libraries like OpenCV, Tkinter, and PyTorch for building both intrusion and object detection systems.Utilize Pre-trained YOLOv8 & YOLOv7-Tiny Models: Master using pre-trained YOLOv8 for intrusion detection and YOLOv7-Tiny for object detection, both of which provide high accuracy even in complex environments.Preprocess Video Streams for Optimal Performance: Learn how to preprocess live video feeds and images for optimal performance with both models to ensure seamless and accurate detection.Build Interactive Tkinter GUIs: Create and implement Tkinter-based GUIs to visualize real-time detection results, displaying alerts and identified intruders or detected objects.Address Real-World Challenges: Tackle common challenges in both object and intrusion detection, such as low-light conditions, occlusions, and high-traffic environments, ensuring the accuracy and reliability of your system.Optimize for Real-Time Performance: Master techniques to ensure fast and efficient processing of live video streams for real-time monitoring in both intrusion detection and object tracking scenarios.Handle Complex Surveillance Environments: Learn how to manage detection in diverse environments, including varying lighting, camera angles, and crowded areas to ensure robust and accurate tracking results.By the End of This Course:You’ll have developed a fully functional AI-powered system that detects unauthorized human activity and objects in real time, using interactive visualization through Tkinter-based GUIs. Whether you're working on security solutions for restricted areas, industrial sites, or public spaces, you will have a comprehensive understanding of deploying advanced AI models in real-world applications.This course is perfect for beginners or those with experience in computer vision and AI, and it will equip you with practical knowledge to build cutting-edge surveillance and detection systems.Enroll now and unlock the potential of YOLOv8 & YOLOv7-Tiny for impactful detection solutions!

    Overview

    Section 1: Introduction of the Object Detection using yolov7

    Lecture 1 Course Overview and Features

    Section 2: Environment Setup for Python Development

    Lecture 2 Installing Python

    Lecture 3 VS Code Setup for Python Development

    Section 3: Object Detection Project Overview

    Lecture 4 Object Detection Project Overview

    Section 4: Understanding Key Packages for Object Detection

    Lecture 5 Understanding Key Packages for Object Detection

    Section 5: Understanding the YOLOv7-tiny Model Weights

    Lecture 6 Detailed Explanation of the YOLOv7-tiny.pt File

    Section 6: Real-Time Object Detection with YOLOv7-tiny

    Lecture 7 Implementing YOLOv7-tiny for Live Video Analysis

    Section 7: Building a Tkinter GUI for Real-Time Object Detection

    Lecture 8 Integrating YOLOv7-tiny with a Tkinter GUI

    Section 8: Executing Real-Time Model Inference for Object Detection

    Lecture 9 Performing Real-Time Object Detection with YOLOv7-tiny

    Section 9: Environment Setup for Python Development

    Lecture 10 Installing Python

    Lecture 11 VS Code Setup for Python Development

    Section 10: Launching VS Code from the Command Line

    Lecture 12 Using CMD to Open VS Code

    Section 11: Managing Folders and Files of the Project

    Lecture 13 Understanding Folder and File Structure

    Section 12: Understanding and Setting Up Required Packages

    Lecture 14 Understanding Key Packages for Intrusion Detection System

    Section 13: Accessing and Using Polygon Coordinates for Tracking

    Lecture 15 Polygon Coordinate File Access and Parsing

    Section 14: Key Variables and Their Role in YOLOv8

    Lecture 16 Understanding and Customizing Key Variables in YOLOv8

    Section 15: Model Inference for Intrusion Detection

    Lecture 17 Model Inference Code Explanation for Intrusion Detection

    Section 16: Tkinter Implementation for Real-Time Intrusion Detection

    Lecture 18 Tkinter Implementation for Real-Time Intrusion Detection

    Section 17: Getting Polygon Coordinates Using Roboflow for Intrusion Detection

    Lecture 19 Getting Polygon Coordinates Using Roboflow

    Section 18: Intrusion Detection Code Execution

    Lecture 20 Intrusion Detection Code Execution

    Section 19: Wrapping Up

    Lecture 21 Course Wrap-Up

    Students eager to learn AI with hands-on projects in intrusion and object detection using YOLOv8 and YOLOv7 pre-trained models.,Professionals seeking to upskill in AI, ML, and Python for real-world applications in security and object detection.,IoT enthusiasts looking to embed AI into smart systems and enhance IoT solutions with detection and automation features.,Aspiring developers aiming to start a career in AI, ML, or computer vision using YOLO and real-time detection models.