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Hands-On Computer Vision with TensorFlow 2

You're reading from   Hands-On Computer Vision with TensorFlow 2 Leverage deep learning to create powerful image processing apps with TensorFlow 2.0 and Keras

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Product type Paperback
Published in May 2019
Publisher Packt
ISBN-13 9781788830645
Length 372 pages
Edition 1st Edition
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Authors (2):
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Eliot Andres Eliot Andres
Author Profile Icon Eliot Andres
Eliot Andres
Benjamin Planche Benjamin Planche
Author Profile Icon Benjamin Planche
Benjamin Planche
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Table of Contents (16) Chapters Close

Preface 1. Section 1: TensorFlow 2 and Deep Learning Applied to Computer Vision FREE CHAPTER
2. Computer Vision and Neural Networks 3. TensorFlow Basics and Training a Model 4. Modern Neural Networks 5. Section 2: State-of-the-Art Solutions for Classic Recognition Problems
6. Influential Classification Tools 7. Object Detection Models 8. Enhancing and Segmenting Images 9. Section 3: Advanced Concepts and New Frontiers of Computer Vision
10. Training on Complex and Scarce Datasets 11. Video and Recurrent Neural Networks 12. Optimizing Models and Deploying on Mobile Devices 13. Migrating from TensorFlow 1 to TensorFlow 2 14. Assessments 15. Other Books You May Enjoy

GANs

First proposed in 2014 by Ian Goodfellow et al. from the University of Montreal, GANs are certainly the most popular solution for generative tasks.

As their name indicates, GANs use an adversarial scheme so they can be trained in an unsupervised manner (this scheme inspired the DANN method introduced earlier in this chapter). Having only a number of images, x, we want to train a generator network to model p(x), that is, to create new valid images. We thus have no proper ground truth data to directly compare the new images with (since they are new). Not able to use a typical loss function, we pit the generator against another network—the discriminator.

The discriminator's task is to evaluate whether an image comes from the original dataset (real image) or if it was generated by the other network (fake image). Like the domain discriminating head in DANN, the discriminator is trained in a supervised manner as a binary classifier using the implicit image labels (real versus...

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