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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

Truncated backpropagation

To circumvent the long training time, it is possible to compute the gradient every k1 time step instead of every step. This divides the number of gradient operations by k1, making the training of the network faster.

Instead of backpropagating throughout all the time steps, we can also limit the propagation to k2 steps in the past. This effectively limits the gradient vanishing, since the gradient will depend on Wk2 at most. This also limits the computations that are necessary to compute the gradient. However, the network will be less likely to learn long-term temporal relations.

The combination of those two techniques is called truncated backpropagation, with its two parameters commonly referred to as k1 and k2. They must be tuned to ensure a good trade-off between training speed and model performance.

This technique—while powerful—remains a workaround for a fundamental RNN problem. In the next section, we will introduce a change of architecture...

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