Published 4/2023
Created by Jones Granatyr,Gabriel Alves,IA Expert Academy
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 56 Lectures ( 9h 55m ) | Size: 4.13 GB
Deep Learning and Computer Vision to implement projects using one of the most revolutionary technologies in the world!
Free Download What you’ll learn
Understand the basic intuition about GANs
Generate images of digits (0 – 9) using DCGAN and WGAN
Transform satellite images into maps using Pix2Pix architecture
Transform zebras into horses using CycleGAN architecture
Transfer styles between images
Apply super resolution to improve image quality using ESRGAN architecture
Create new faces of people with high quality and definition using StyleGAN
Generate images through textual descriptions
Restore old photos using GFP-GAN
Complete missing parts of images using Boundless architecture
Generate deepfakes to swap faces with SimSwap
Requirements
Programming logic
Basic Python programming
Knowledge about neural networks is desirable, but not mandatory
Description
GANs (Generative Adversarial Networks) are considered one of the most modern and fascinating technologies within the field of Deep Learning and Computer Vision. They have gained a lot of attention because they can create fake content. One of the most classic examples is the creation of people who do not exist in the real world to be used to broadcast television programs. This technology is considered a revolution in the field of Artificial Intelligence for producing high quality results, remaining one of the most popular and relevant topics.In this course you will learn the basic intuition and mainly the practical implementation of the most modern architectures of Generative Adversarial Networks! This course is considered a complete guide because it presents everything from the most basic concepts to the most modern and advanced techniques, so that in the end you will have all the necessary tools to build your own projects! See below some of the projects that you are going to implement step by step:Creating of digits from 0 to 9Transforming satellite images into map images, like Google Maps styleConvert drawings into high-quality photosCreate zebras using horse imagesTransfer styles between images using paintings by famous artists such as Van Gogh, Cezanne and Ukiyo-eIncrease the resolution of low quality images (super resolution)Generate deepfakes (fake faces) with high qualityCreate images through textual descriptionsRestore old photosComplete missing parts of imagesSwap the faces of people who are in different environmentsTo implement the projects, you will learn several different architectures of GANs, such as: DCGAN (Deep Convolutional Generative Adversarial Network), WGAN (Wassertein GAN), WGAN-GP (Wassertein GAN-Gradient Penalty), cGAN (conditional GAN), Pix2Pix (Image-to-Image), CycleGAN (Cycle-Consistent Adversarial Network), SRGAN (Super Resolution GAN), ESRGAN (Enhanced Super Resolution GAN), StyleGAN (Style-Based Generator Architecture for GANs), VQ-GAN (Vector Quantized Generative Adversarial Network), CLIP (Contrastive Language-Image Pre-training), BigGAN, GFP-GAN (Generative Facial Prior GAN), Unlimited GAN (Boundless) and SimSwap (Simple Swap).During the course, we will use the Python programming language and Google Colab online, so you do not have to worry about installing and configuring libraries on your own machine!
Who this course is for
People interested in creating complex applications using GANs
Undergraduate and graduate students who are taking courses on Computer Vision, Artificial Intelligence, Digital Image Processing or Computer Vision
People who want to implement their own projects using Computer Vision techniques
Data Scientists who want to increase their project portfolio
Homepage
https://www.udemy.com/course/generative-adversarial-networks-gans-complete-guide/
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