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    Computer Vision Masterclass

    Posted By: ELK1nG
    Computer Vision Masterclass

    Computer Vision Masterclass
    MP4 | h264, 1280x720 | Lang: English | Audio: aac, 44100 Hz | 25h 28m | 9.71 GB

    Learn in practice everything you need to know about Computer Vision! Build projects step by step using Python!

    What you'll learn
    Understand the basic intuition about Cascade and HOG classifiers to detect faces
    Implement face detection using OpenCV and Dlib library
    Learn how to detect other objects using OpenCV, such as cars, clocks, eyes, and full body of people
    Compare the results of three face detectors: Haarcascade, HOG (Histogram of Oriented Gradients) and CNN (Convolutional Neural Networks)
    Detect faces using images and the webcam
    Understand the basic intuition about LBPH algorithm to recognize faces
    Implement face recognition using OpenCV and Dlib library
    Recognize faces using images and the webcam
    Understand the basic intuition about KCF and CSRT algorithms to perform object tracking
    Learn how to track objects in videos using OpenCV library
    Learn everything you need to know about the theory behind neural networks, such as: perceptron, activation functions, weight update, backpropagation, gradient descent and a lot more
    Implement dense neural networks to classify images
    Learn how to extract pixels and features from images in order to build neural networks
    Learn the theory behind convolutional neural networks and implement them using Python and TensorFlow
    Implement transfer learning and fine tuning to get incredible results when classifying images
    Use convolutional neural networks to classify the following emotions in images and videos: happy, anger, disgust, fear, surprise and neutral
    Compress images using linear and convolutional autoencoders
    Detect objects in images in videos using YOLO, one of the most powerful algorithms today
    Recognize gestures and actions in videos using OpenCV
    Learn how to create hallucinogenic images with Deep Dream
    Learn how to revive famous artists with style transfer
    Create images that don't exist in the real world with GANs (Generative Adversarial Networks)
    Implement image segmentation do extract useful information from images and videos

    Requirements
    Programming logic
    Basic Python programming
    Description
    Computer Vision is a subarea of Artificial Intelligence focused on creating systems that can process, analyze and identify visual data in a similar way to the human eye. There are many commercial applications in various departments, such as: security, marketing, decision making and production. Smartphones use Computer Vision to unlock devices using face recognition, self-driving cars use it to detect pedestrians and keep a safe distance from other cars, as well as security cameras use it to identify whether there are people in the environment for the alarm to be triggered.

    In this course you will learn everything you need to know in order to get in this world. You will learn the step-by-step implementation of the 14 (fourteen) main computer vision techniques. If you have never heard about computer vision, at the end of this course you will have a practical overview of all areas. Below you can see some of the content you will implement:

    Detect faces in images and videos using OpenCV and Dlib libraries

    Learn how to train the LBPH algorithm to recognize faces, also using OpenCV and Dlib libraries

    Track objects in videos using KCF and CSRT algorithms

    Learn the whole theory behind artificial neural networks and implement them to classify images

    Implement convolutional neural networks to classify images

    Use transfer learning and fine tuning to improve the results of convolutional neural networks

    Detect emotions in images and videos using neural networks

    Compress images using autoencoders and TensorFlow

    Detect objects using YOLO, one of the most powerful techniques for this task

    Recognize gestures and actions in videos using OpenCV

    Create hallucinogenic images using the Deep Dream technique

    Combine style of images using style transfer

    Create images that don't exist in the real world with GANs (Generative Adversarial Networks)

    Extract useful information from images using image segmentation

    You are going to learn the basic intuition about the algorithms and implement some project step by step using Python language and Google Colab

    Who this course is for:
    Beginners who are starting to learn Computer Vision
    Undergraduate students who are studying subjects related to Artificial Intelligence
    People who want to solve their own problems using Computer Vision
    Students who want to work in companies developing Computer Vision projects
    People who want to know all areas inside Computer Vision, as well as know the problems that these techniques are able to solve
    Anyone interested in Artificial Intelligence or Computer Vision
    Data scientists who want to grow their portfolio
    Professionals who want to understand how to apply Computer Vision to real projects