In this OpenCV face recognition tutorial for dummies, you will learn how to use OpenCV to perform face recognition. OpenCV (Open Source Computer Vision Library) is an open source computer vision and machine learning software library. What is OpenCV?
What is OpenCV
OpenCV (Open Source Computer Vision Library) is an open source computer vision and machine learning software library. OpenCV was built to provide a common infrastructure for computer vision applications and to accelerate the use of machine perception in the commercial products. Being a BSD-licensed product, OpenCV makes it easy for businesses to utilize and modify the code.
GitHub project used in example: https://github.com/adityaguptai/Face-Recognition
OpenCV Python Tutorial: Computer Vision With OpenCV In Python: Learn Vision Includes all OpenCV Image Processing Features with Simple Examples. Face Detection, Face Recognition. Computer Vision is an AI based, that is, Artificial Intelligence based technology that allows computers to understand and label images. Use OpenCV to work with image files. Create Face Detection Software. Detect Objects, including corner, edge, and grid detection techniques with OpenCV and Python. Use Python and Deep Learning to build image classifiers. Use Python and OpenCV to draw shapes on images and videos. Create Color Histograms with OpenCVOpenCV Python Tutorial: Computer Vision With OpenCV In Python
Computer Vision is an AI based, that is, Artificial Intelligence based technology that allows computers to understand and label images. Its now used in Convenience stores, Driver-less Car Testing, Security Access Mechanisms, Policing and Investigations Surveillance, Daily Medical Diagnosis monitoring health of crops and live stock and so on and so forth..
A common example will be face detection and unlocking mechanism that you use in your mobile phone. We use that daily. That is also a big application of Computer Vision. And today, top technology companies like Amazon, Google, Microsoft, Facebook etc are investing millions and millions of Dollars into Computer Vision based research and product development.
Computer vision allows us to analyze and leverage image and video data, with applications in a variety of industries, including self-driving cars, social network apps, medical diagnostics, and many more.
As the fastest growing language in popularity, Python is well suited to leverage the power of existing computer vision libraries to learn from all this image and video data.
What you'll learn
OpenCV Python for Beginners - Learn Computer Vision with OpenCV in 10 Hours (2020). You'll learn: Introduction to OpenCV; How to Install OpenCV for Python on Windows 10; How to Read, Write, Show Images in OpenCV; How to Read, Write, Show Videos from Camera in OpenCV; matplotlib with OpenCV; Image Pyramids with Python and OpenCV; Canny Edge Detection in OpenCV; Image Blending using Pyramids in OpenCV; Face Detection using Haar Cascade Classifiers ...
Welcome to this courese on OpenCV Python Tutorial For Beginners.
OpenCV is an image processing library created by Intel and later supported by Willow Garage and now maintained by Itseez. opencv is available on Mac, Windows, Linux. Works in C, C++, and Python.
it is Open Source and free. opencv is easy to use and install.
Starting with an overview of what the course will be covering, we move on to discussing morphological operations and practically learn how they work on images. We will then learn contrast enhancement using equalization and contrast limiting. Finally we will learn 3 methods to subtract the background from the video and implement them using OpenCV.
At the end of this course, you will have a firm grasp of Computer Vision techniques using OpenCV libraries. This course will be your gateway to the world of data science.
Feel the real power of Python and programming! The course offers you a unique approach of learning how to code by solving real world problems.
1 - Introduction to OpenCV
2 - How to Install OpenCV for Python on Windows 10
3 - How to Read, Write, Show Images in OpenCV
4 - How to Read, Write, Show Videos from Camera in OpenCV
5 - Draw geometric shapes on images using Python OpenCV
6 - Setting Camera Parameters in OpenCV Python
7 - Show Date and Time on Videos using OpenCV Python
8 - Handle Mouse Events in OpenCV
9 - More Mouse Event Examples in OpenCV Python
10 - cv.split, cv.merge, cv.resize, cv.add, cv.addWeighted, ROI
11- Bitwise Operations (bitwise AND, OR, NOT and XOR)
12 - How to Bind Trackbar To OpenCV Windows
13 - Object Detection and Object Tracking Using HSV Color Space
14 - Simple Image Thresholding
15 - Adaptive Thresholding
16 - matplotlib with OpenCV
17 - Morphological Transformations
18 - Smoothing Images | Blurring Images OpenCV
19 - Image Gradients and Edge Detection
20 - Canny Edge Detection in OpenCV
21 - Image Pyramids with Python and OpenCV
22 - Image Blending using Pyramids in OpenCV
22 - Image Blending using Pyramids in OpenCV
23 - Find and Draw Contours with OpenCV in Python
24 - Motion Detection and Tracking Using Opencv Contours
25 - Detect Simple Geometric Shapes using OpenCV in Python
26 - Understanding image Histograms using OpenCV Python
27 - Template matching using OpenCV in Python
28 - Hough Line Transform Theory
29 - Hough Line Transform using HoughLines method in OpenCV
30 - Probabilistic Hough Transform using HoughLinesP in OpenCV
31 - Road Lane Line Detection with OpenCV (Part 1)
32 - Road Lane Line Detection with OpenCV (Part 2)
33 - Road Lane Line Detection with OpenCV (Part 3)
34 - Circle Detection using OpenCV Hough Circle Transform
35 - Face Detection using Haar Cascade Classifiers
36 - Eye Detection Haar Feature based Cascade Classifiers
37 - Detect Corners with Harris Corner Detector in OpenCV
38 - Detect Corners with Shi Tomasi Corner Detector in OpenCV
39 - How to Use Background Subtraction Methods in OpenCV
40 - Mean Shift Object Tracking
41 - Object Tracking Camshift Method
Complete hands-on Machine Learning tutorial with Data Science, Tensorflow, Artificial Intelligence, and Neural Networks. Introducing Tensorflow, Using Tensorflow, Introducing Keras, Using Keras, Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Learning Deep Learning, Machine Learning with Neural Networks, Deep Learning Tutorial with PythonMachine Learning, Data Science and Deep Learning with Python
Explore the full course on Udemy (special discount included in the link): http://learnstartup.net/p/BkS5nEmZg
In less than 3 hours, you can understand the theory behind modern artificial intelligence, and apply it with several hands-on examples. This is machine learning on steroids! Find out why everyone’s so excited about it and how it really works – and what modern AI can and cannot really do.
In this course, we will cover:
• Deep Learning Pre-requistes (gradient descent, autodiff, softmax)
• The History of Artificial Neural Networks
• Deep Learning in the Tensorflow Playground
• Deep Learning Details
• Introducing Tensorflow
• Using Tensorflow
• Introducing Keras
• Using Keras to Predict Political Parties
• Convolutional Neural Networks (CNNs)
• Using CNNs for Handwriting Recognition
• Recurrent Neural Networks (RNNs)
• Using a RNN for Sentiment Analysis
• The Ethics of Deep Learning
• Learning More about Deep Learning
At the end, you will have a final challenge to create your own deep learning / machine learning system to predict whether real mammogram results are benign or malignant, using your own artificial neural network you have learned to code from scratch with Python.
Separate the reality of modern AI from the hype – by learning about deep learning, well, deeply. You will need some familiarity with Python and linear algebra to follow along, but if you have that experience, you will find that neural networks are not as complicated as they sound. And how they actually work is quite elegant!
This is hands-on tutorial with real code you can download, study, and run yourself.