Computer Vision 2022 Masterclass With Opencv4 And Python
Published 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.35 GB | Duration: 4h 58m
Published 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 5.35 GB | Duration: 4h 58m
Become a Computer Vision Guru, Learn & implement everything from basics to advanced using OpenCV4, Dlib and DeepLearning
What you'll learn
Become a Master Computer Vision Programmer by learning from the field experts.
Start from the ground up by Coding Image Processing basics i.e. (Image access and manipulations)
Make your CV Projects interactive by learning to utilize Trackbars and Mouse Events
Deep-dive into CV_101 topics i.e. (Transformations, Filtering, Segmentation, Contours and Features )
Conquer advanced techniques like Object detection, Object Tracking, Object Recognition
Understand, Train and deploy Haar Cascade and YOLOv3 for Object detection
Perform Single Object Tracking using CSRT, KCF etc. and Multi-Object Tracking using DeepSort.
Implement and compare Simple Face-Recognizers like LBP, FisherFaces with highly accurate dlib Implementation.
Secure Access: Create a python executable that only allows access on your pc to authorized personnel's through a complete end-to-end development.
Requirements
Python basic Programming
Description
This course is your ultimate guide for entering into the realm of Computer Vision. We will start from the very basics i.e Image Formation and Characteristics, Perform basic image processing (Read/Write Image & Video + Image Manipulation), make CV applications interactive using Trackbars and Mouse events, build your skillset with Computer Vision techniques (Segmentation, Filtering & Features) before finally Mastering Advanced Computer Vision Topics i.e Object Detection, Tracking, and recognition. Right at the end, we will develop a complete end-to-end Visual Authorization System (Secure Access). The course is structured with below main headings.Computer Vision FundamentalsImage Processing Basics (Coding)CV-101 (Theory + Coding)Advanced CV (Theory + Coding)Project: Secure Access (End-to-end project development & deployment)From Basics to Advanced, each topic will accompany a coding session along with theory. Programming assignments will also be added for testing your knowledge. Python Object Oriented programming practices will be utilized for better development.Learning Outcomes - Computer VisionRead/Write Image & Video + Image ManipulationInteractive CV applications with Trackbars & MouseEventsLearn CV Techniques i.e (Transformation, Filtering, Segmentation, and Features)Understand, train, and deploy advanced topics i.e (Object Detection, Tracking, and Recognition)[Project] Develop an end-to-end Visual Authorization System for your Computer.- AlgorithmsFacial recognition algorithms like LBP and Dlib-ImplementationLBP (Fast-Less accurate)Dlib-Implementation (Slow-Accurate)Single Object TrackersCSRT, KCFMultiple Object TrackersDeepSort (Slow-Accurate)Object DetectionHaar Cascades (Fast-Less accurate)YoloV3 (Slow-Accurate)Computer Vision TechniquesSift | Orb Feature MatchingCanny Edge detectionBinary, Otsu, and Adaptive ThresholdingKmeans SegmentationConvex hull ApproximationPre-Course RequirmentsSoftware BasedOpenCV4PythonSkill BasedBasic Python ProgrammingMotivated mind :)All the codes for reference are available on the GitHub repository of this course.Get a good idea by going through all of our free previews available and feel free to contact us in case of any confusion :)
Overview
Section 1: Introduction
Lecture 1 Computer Vision Fundamentals
Section 2: Image Processing Basics
Lecture 2 Reading/Writing image and Videos in OpenCV (Coding)
Lecture 3 Image Manipulation (Coding)
Lecture 4 Important Functions (Coding)
Lecture 5 Make CV Applications Interactive #1 : Trackbars
Lecture 6 Make CV Applications Interactive #2 : MouseEvents
Section 3: CV-101
Lecture 7 Image Transformations (Theory)
Lecture 8 Image Transformations (Coding)
Lecture 9 Image Filtering (Theory)
Lecture 10 Image Filtering (Coding)
Lecture 11 Image Segmentation (Theory)
Lecture 12 Image Segmentation (Coding)
Lecture 13 Image Contours (Theory)
Lecture 14 Image Contours (Coding)
Lecture 15 Image Features - Keypoints (Theory)
Lecture 16 Image Features - Keypoints (Coding)
Lecture 17 Image Features - Descriptors (Theory)
Lecture 18 Image Features - Descriptors (Coding)
Lecture 19 Feature Matching
Beginner Python developers curious about Computer Vision,Undergrads wanting to investigate/opt-in to Computer Vision,University Graduates looking to add Computer Vision in their skillset,Computer Vision Programmers wanting to brush up on some basics