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TensorFlow 2.0 Computer Vision Cookbook

You're reading from   TensorFlow 2.0 Computer Vision Cookbook Implement machine learning solutions to overcome various computer vision challenges

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Product type Paperback
Published in Feb 2021
Publisher Packt
ISBN-13 9781838829131
Length 542 pages
Edition 1st Edition
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Author (1):
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Jesús Martínez Jesús Martínez
Author Profile Icon Jesús Martínez
Jesús Martínez
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Table of Contents (14) Chapters Close

Preface 1. Chapter 1: Getting Started with TensorFlow 2.x for Computer Vision 2. Chapter 2: Performing Image Classification FREE CHAPTER 3. Chapter 3: Harnessing the Power of Pre-Trained Networks with Transfer Learning 4. Chapter 4: Enhancing and Styling Images with DeepDream, Neural Style Transfer, and Image Super-Resolution 5. Chapter 5: Reducing Noise with Autoencoders 6. Chapter 6: Generative Models and Adversarial Attacks 7. Chapter 7: Captioning Images with CNNs and RNNs 8. Chapter 8: Fine-Grained Understanding of Images through Segmentation 9. Chapter 9: Localizing Elements in Images with Object Detection 10. Chapter 10: Applying the Power of Deep Learning to Videos 11. Chapter 11: Streamlining Network Implementation with AutoML 12. Chapter 12: Boosting Performance 13. Other Books You May Enjoy

Using test time augmentation to improve accuracy

Most of the time, when we're testing the predictive power of a network, we use a test set to do so. This test set is comprised of images the model has never seen. Then, we present them to the model and ask it what class each belongs to. The thing is… we do it once.

What if we were more forgiving and gave the model multiple chances to do this? Would its accuracy improve? Well, more often than not, it does!

This technique is known as Test Time Augmentation (TTA), and it's the focus of this recipe.

Getting ready

In order to load the images in the dataset, we need Pillow. Install it using the following command:

$> pip install Pillow

Then, download the Caltech 101 dataset, which is available here: http://www.vision.caltech.edu/Image_Datasets/Caltech101/. Download and decompress 101_ObjectCategories.tar.gz to a location of your choosing. For the rest of this recipe, we'll work under the assumption...

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