Beginner'S Guide To Learn Computer Vision With Python
Published 12/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 292.21 MB | Duration: 0h 49m
Published 12/2023
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 292.21 MB | Duration: 0h 49m
Learn to implement popular CV algorithms with OpenCV python library
What you'll learn
Learn fundamentals of Computer Vision
Understand state of art image and video processing Algorithms in CV
Understand application of Deep Learning Models in the CV
Learn to implement CV algorithms with OpenCV python library
Requirements
Familiar with python programming language and any python IDE (like PyCharm)
Description
Learn fundamentals of Computer Vision with state of art image and video processing Algorithms.Course StructureIntroduction:IntroductionReal world ApplicationsPopular Computer Vision Techniques:Image SegmentationDemo - Image SegmentationEdge DetectionDemo - Edge DetectionFeature ExtractionDemo - Feature ExtractionApplication of CV techniquesObject Detection, Tracking and Classification:Object DetectionObject TrackingImage ClassificationDemo: Image ClassificationChallenges in CVDeep Learning for Computer Vision:What is Deep Learning?Convolutional Neural Network (CNN)Demo - CNNTransfer LearningBenefits of Deep Learning in CVImage Recognition:Face Detection and RecognitionDemo - Face DetectionOptical Character Recognition (OCR)Demo - OCRAdvanced Techniques - Panorama Creation:Image RegistrationImage StitchingDemo - Image StitchingMotion Analysis:Motion AnalysisVideo ProcessingBackground SubtractionDemo: Background SubtractionRealtime Video Processing:Realtime Video ProcessingDemo - Object DetectionApplication in RoboticsRequirementsBasics knowledge of computer programmingFamiliar with python programming language and any python IDE (like PyCharm)Windows / Linux / Mac OS X Machine with InternetContent teamExpert: Arunkumar KrishnanProduction: Vishnu Sakthivel, Visshwa BalasubramanianWhat you will learn?Learn fundamentals of Computer VisionUnderstand state of art image and video processing Algorithms in CVUnderstand application of Deep Learning Models in the CVLearn to implement CV algorithms with OpenCV python library
Overview
Section 1: Introduction
Lecture 1 Introduction
Lecture 2 Real word Applications
Lecture 3 Summary
Section 2: Popular Computer Vision Techniques
Lecture 4 Image Segmentation
Lecture 5 Demo - Image Segmentation
Lecture 6 Edge Detection
Lecture 7 Demo - Edge Detection
Lecture 8 Feature Extraction
Lecture 9 Demo - Feature Extraction
Lecture 10 Application of CV techniques
Lecture 11 Summary
Section 3: Object Detection, Tracking and Classification
Lecture 12 Object Detection
Lecture 13 Object Tracking
Lecture 14 Image Classification
Lecture 15 Demo: Image Classification
Lecture 16 Challenges in CV
Lecture 17 Summary
Section 4: Deep Learning in Computer Vision
Lecture 18 What is Deep Learning?
Lecture 19 Convolutional Neural Network (CNN)
Lecture 20 Demo - CNN
Lecture 21 Transfer Learning
Lecture 22 Demo - Transfer Learning
Lecture 23 Benefits of Deep Learning in CV
Lecture 24 Summary
Section 5: Image Recognition
Lecture 25 Face Detection and Recognition
Lecture 26 Demo - Face Detection
Lecture 27 Optical Character Recognition (OCR)
Lecture 28 Demo - OCR
Lecture 29 Summary
Section 6: Advanced Techniques - Panorama Creation
Lecture 30 Image Registration
Lecture 31 Image Stitching
Lecture 32 Demo - Image Stitching
Lecture 33 Summary
Section 7: Motion Analysis
Lecture 34 Motion Analysis
Lecture 35 Video Processing
Lecture 36 Background Subtraction
Lecture 37 Demo: Background Subtraction
Lecture 38 Summary
Section 8: Realtime Video Processing
Lecture 39 Realtime Video Processing
Lecture 40 Demo - Object Detection
Lecture 41 Application in Robotics
Lecture 42 Summary
Freshers and experienced professionals interested in learning 'Computer Vision'