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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

Early stopping

Neural networks start overfitting when they iterate too many times over the same small set of training samples. Therefore, a straightforward solution to prevent this problem is to figure out the number of training epochs a model needs. The number should be low enough to stop before the network starts overfitting, but still high enough for the network to learn all it can from this training set.

Cross-validation is the key here to evaluate when training should be stopped. Providing a validation dataset to our optimizer, the latter can measure the performance of the model on images the network has not been directly optimized for. By validating the network, for instance, after each epoch, we can measure whether the training should continue (that is, when the validation accuracy appears to be still increasing) or be stopped (that is, when the validation accuracy stagnates or drops). The latter is called early stopping.

In practice, we usually monitor and plot the validation...

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