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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 rank-N accuracy to evaluate performance

Most of the time, when we're training deep learning-based image classifiers, we care about the accuracy, which is a binary measure of a model's performance, based on a one-on-one comparison between its predictions and the ground-truth labels. When the model says there's a leopard in a photo, is there actually a leopard there? In other words, we measure how precise the model is.

However, for more complex datasets, this way of assessing a network's learning might be counterproductive and even unfair, because it's too restrictive. What if the model didn't classify the feline in the picture as a leopard but as a tiger? Moreover, what if the second most probable class was, indeed, a leopard? This means the model has some more learning to do, but it's getting there! That's valuable!

This is the reasoning behind rank-N accuracy, a more lenient and fairer way of measuring a predictive model's...

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