Book Image

Hands-On Generative Adversarial Networks with PyTorch 1.x

By : John Hany, Greg Walters
Book Image

Hands-On Generative Adversarial Networks with PyTorch 1.x

By: John Hany, Greg Walters

Overview of this book

With continuously evolving research and development, Generative Adversarial Networks (GANs) are the next big thing in the field of deep learning. This book highlights the key improvements in GANs over generative models and guides in making the best out of GANs with the help of hands-on examples. This book starts by taking you through the core concepts necessary to understand how each component of a GAN model works. You'll build your first GAN model to understand how generator and discriminator networks function. As you advance, you'll delve into a range of examples and datasets to build a variety of GAN networks using PyTorch functionalities and services, and become well-versed with architectures, training strategies, and evaluation methods for image generation, translation, and restoration. You'll even learn how to apply GAN models to solve problems in areas such as computer vision, multimedia, 3D models, and natural language processing (NLP). The book covers how to overcome the challenges faced while building generative models from scratch. Finally, you'll also discover how to train your GAN models to generate adversarial examples to attack other CNN and GAN models. By the end of this book, you will have learned how to build, train, and optimize next-generation GAN models and use them to solve a variety of real-world problems.
Table of Contents (15 chapters)
Free Chapter
1
Section 1: Introduction to GANs and PyTorch
5
Section 2: Typical GAN Models for Image Synthesis

Sequence Synthesis with GANs

In this chapter, we will work on GANs that directly generate sequential data, such as text and audio. While doing so, we will go back to the previous image-synthesizing models we've looked at so that you can become familiar with NLP models quickly.

Throughout this chapter, you will get to know the commonly used techniques of the NLP field, such as RNN and LSTM. You will also get to know some of the basic concepts of reinforcement learning (RL) and how it differs from supervised learning (such as SGD-based CNNs). Later on, we will learn how to build a custom vocabulary from a collection of text so that we can train our own NLP models and learn how to train SeqGAN so that it can generate short English jokes. You will also learn how to use SEGAN to remove background noise and enhance the quality of speech audio.

The following topics will be covered...