kingers Posted April 17 Report Share Posted April 17 Learn Opencv For Computer Vision Published 12/2023 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 2.74 GB | Duration: 4h 3mLearn CV tool perform hands-on in all essential topics What you'll learn To study the process of Image formation and Image manipulation To study about image processing To impart knowledge on image enhancement techniques To understand the significance of vision in robotics To understand the process of integrating intelligence in Vision Requirements Basic knowledge of Programming Knowledge in Python Programming Language Basic Understanding of Computer Vision Description If you ever wondered what the logic and the program is behind on how a computer is interpreting the images that are being captured, then this is the correct course for you. In this course we will be using Open CV Library. This library comprises of programming functions mainly aimed at real-time computer vision.At this point, you would be wondering what is the purpose of learning Computer Vision? This is an area segment in Artificial Intelligence where computer algorithms are used to decipher what the computer understands from captured images. This field is currently used by various leading companies like Google, Facebook, Apple etc. You are having Computer Vision related aspects even in mobile phone applications like Snapchat, Instagram, Google Lens, etc.In this course, we will cover the basics of Computer Vision and create a project. At this point, you would be wondering what is the purpose of learning Computer Vision? This is an area segment in Artificial Intelligence where computer algorithms are used to decipher what the computer understands from captured images. This field is currently used by various leading companies like Google, Facebook, Apple etc. You are having Computer Vision related aspects even in mobile phone applications like Snapchat, Instagram, Google Lens, etc.In this course, we will cover the basics of Computer Vision and create a project. Overview Section 1: About the Program Lecture 1 Course Introduction Lecture 2 Course Outline Section 2: Introduction to Computer Vision Lecture 3 What is Computer Vision? Lecture 4 Applications of Computer Vision Lecture 5 Difference between Computer Vision & DIP Lecture 6 Tools for Computer Vision Section 3: Software Installation Lecture 7 Installing Anaconda Distribution Lecture 8 Handling Jupyter Notebooks 1 Lecture 9 Handling Jupyter Notebooks 2 Lecture 10 Handling Jupyter Notebooks 3 Lecture 11 Handling Jupyter Notebooks 4 Lecture 12 Handling Jupyter Notebooks 5 Lecture 13 Installation of OpenCV Section 4: Fundamentals of OpenCV Lecture 14 Fundamentals of Image Processing Lecture 15 Reading Images Lecture 16 Video Loading Lecture 17 Changing Color Spaces Lecture 18 Changing Color Spaces (Jupyter) Lecture 19 Pixel Manipulation Lecture 20 Pixel Manipulation - Initial Setup (Jupyter) Lecture 21 Pixel Manipulation - Operation 1 (Jupyter) Lecture 22 Pixel Manipulation - Operation 2 (Jupyter) Lecture 23 Region of Interest Lecture 24 Region of Interest (Jupyter) Section 5: Image Processing - Image Manipulation Lecture 25 What is Image Resizing? Lecture 26 Image Resizing (Jupyter) Lecture 27 What is Image Blurring? Lecture 28 Image Blurring (Jupyter) Lecture 29 What is Image Pyramid? Lecture 30 Image Pyramid (Jupyter) Section 6: Image Processing - Arithmetic Operations Lecture 31 What is Arithmetic Operation? Lecture 32 What is Image Blending? Lecture 33 Image Blending (Jupyter) Lecture 34 What is Image Subtraction? Lecture 35 Image Subtraction (Jupyter) Lecture 36 What is Bitwise Operation? Lecture 37 Bitwise Operation (Jupyter) Section 7: Edge Detection Lecture 38 Edge Detection Lecture 39 Edge Detection (Jupyter) Section 8: Morphological Operations Lecture 40 Morphological Transformations Lecture 41 Morphological Transformations - Initial Setup (Jupyter) Lecture 42 Understanding Erosion and Dilation Lecture 43 Morphological Transformations - Erosion & Dilation (Jupyter) Lecture 44 Understanding Morphological Techniques Lecture 45 Morphological Transformations - Opening & Closing (Jupyter) Section 9: Image Thresholding & Filtering Lecture 46 Simple Thresholding Lecture 47 Simple Thresholding (Jupyter) Lecture 48 What is Noise in an Image? Lecture 49 Sobel Filter-Using Gradients Lecture 50 Sobel filter-Using Gradients (Jupyter) Lecture 51 Laplacian Filter-Using Gradients Lecture 52 Laplacian Filter-Using Gradients (Jupyter) Section 10: Image Segmentation Lecture 53 What is Image Segmentation? Lecture 54 Understanding Cluster based Segmentation Lecture 55 Image Segmentation (Jupyter) Section 11: Feature Extraction Lecture 56 What is Feature Matching? Lecture 57 Understanding HOG Lecture 58 Feature Matching - Using HOG (Jupyter) Section 12: Motion Detection Lecture 59 What is Motion Detection? Lecture 60 Understanding Dense Optical Flow Lecture 61 Dense Optical Flow (Jupyter) Section 13: Project Lecture 62 Cartoonify Section 14: About the Program Lecture 63 Course Conclusion Anyone interested in the field of computer vision,Anyone interested in image processingAusFilehttps://ausfile.com/607fjlhttppx/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part1.rarhttps://ausfile.com/g30qy9grpb63/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part2.rarhttps://ausfile.com/ks3jcg6qo9k0/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part3.rarRapidGatorhttps://rapidgator.net/file/3031595250e1d6f9327b10bbe8ea15c8/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part1.rarhttps://rapidgator.net/file/aed4d5828226caf40cd130c99d48b625/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part2.rarhttps://rapidgator.net/file/095f81569fe91fb50bf3ebfe2e3d5227/yxusj.Udemy_Learn_OpenCV_for_Computer_Vision.part3.rar Link to comment Share on other sites More sharing options...
Recommended Posts
Create an account or sign in to comment
You need to be a member in order to leave a comment
Create an account
Sign up for a new account in our community. It's easy!
Register a new accountSign in
Already have an account? Sign in here.
Sign In Now