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Exploring Deepfakes

You're reading from   Exploring Deepfakes Deploy powerful AI techniques for face replacement and more with this comprehensive guide

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Product type Paperback
Published in Mar 2023
Publisher Packt
ISBN-13 9781801810692
Length 192 pages
Edition 1st Edition
Languages
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Authors (2):
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Matt Tora Matt Tora
Author Profile Icon Matt Tora
Matt Tora
Bryan Lyon Bryan Lyon
Author Profile Icon Bryan Lyon
Bryan Lyon
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Table of Contents (15) Chapters Close

Preface 1. Part 1: Understanding Deepfakes
2. Chapter 1: Surveying Deepfakes FREE CHAPTER 3. Chapter 2: Examining Deepfake Ethics and Dangers 4. Chapter 3: Acquiring and Processing Data 5. Chapter 4: The Deepfake Workflow 6. Part 2: Getting Hands-On with the Deepfake Process
7. Chapter 5: Extracting Faces 8. Chapter 6: Training a Deepfake Model 9. Chapter 7: Swapping the Face Back into the Video 10. Part 3: Where to Now?
11. Chapter 8: Applying the Lessons of Deepfakes 12. Chapter 9: The Future of Generative AI 13. Index 14. Other Books You May Enjoy

Getting hands-on with AI

The first code we’ll examine here is the actual model itself. This code defines the neural network and how it’s structured, as well as how it’s called. All of this is stored in the lib/models.py library file.

First, we load any libraries we’re using:

import torch
from torch import nn

In this case, we only import PyTorch and its nn submodule. This is because we only include the model code in this file and any other libraries will be called in the file that uses those functions.

Defining our upscaler

One of the most important parts of our model is the upscaling layers. Because this is used multiple times in both the encoder and decoder, we’ve broken it out into its own definition, and we’ll cover that here:

  1. First, we define our class:
    class Upscale(nn.Module):
      """ Upscale block to double the width/height from depth. """
      def __init__(self, size...
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