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Deep Learning By Example

You're reading from   Deep Learning By Example A hands-on guide to implementing advanced machine learning algorithms and neural networks

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Product type Paperback
Published in Feb 2018
Publisher Packt
ISBN-13 9781788399906
Length 450 pages
Edition 1st Edition
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Author (1):
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Ahmed Menshawy Ahmed Menshawy
Author Profile Icon Ahmed Menshawy
Ahmed Menshawy
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Toc

Table of Contents (18) Chapters Close

Preface 1. Data Science - A Birds' Eye View FREE CHAPTER 2. Data Modeling in Action - The Titanic Example 3. Feature Engineering and Model Complexity – The Titanic Example Revisited 4. Get Up and Running with TensorFlow 5. TensorFlow in Action - Some Basic Examples 6. Deep Feed-forward Neural Networks - Implementing Digit Classification 7. Introduction to Convolutional Neural Networks 8. Object Detection – CIFAR-10 Example 9. Object Detection – Transfer Learning with CNNs 10. Recurrent-Type Neural Networks - Language Modeling 11. Representation Learning - Implementing Word Embeddings 12. Neural Sentiment Analysis 13. Autoencoders – Feature Extraction and Denoising 14. Generative Adversarial Networks 15. Face Generation and Handling Missing Labels 16. Implementing Fish Recognition 17. Other Books You May Enjoy

Applications of autoencoders

In the previous example of constructing images from a lower representation, we saw it was very similar to the original input, and also we saw the benefits of CANs while denoising the noisy dataset. This kind of example we have implemented above is really useful for the image construction applications and dataset denoising. So you can generalize the above implementation to any other example of interest to you.

Also, throughout this chapter, we have seen how flexible the autoencoder architecture is and how we can make different changes to it. We have even tested it to solve harder problems of removing noise from input images. This kind of flexibility opens the door to many more applications that auoencoders will be a great fit for.

Image colorization

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