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TensorFlow 2.0 Quick Start Guide

You're reading from   TensorFlow 2.0 Quick Start Guide Get up to speed with the newly introduced features of TensorFlow 2.0

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Product type Paperback
Published in Mar 2019
Publisher Packt
ISBN-13 9781789530759
Length 196 pages
Edition 1st Edition
Languages
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Author (1):
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Tony Holdroyd Tony Holdroyd
Author Profile Icon Tony Holdroyd
Tony Holdroyd
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Table of Contents (15) Chapters Close

Preface 1. Section 1: Introduction to TensorFlow 2.00 Alpha
2. Introducing TensorFlow 2 FREE CHAPTER 3. Keras, a High-Level API for TensorFlow 2 4. ANN Technologies Using TensorFlow 2 5. Section 2: Supervised and Unsupervised Learning in TensorFlow 2.00 Alpha
6. Supervised Machine Learning Using TensorFlow 2 7. Unsupervised Learning Using TensorFlow 2 8. Section 3: Neural Network Applications of TensorFlow 2.00 Alpha
9. Recognizing Images with TensorFlow 2 10. Neural Style Transfer Using TensorFlow 2 11. Recurrent Neural Networks Using TensorFlow 2 12. TensorFlow Estimators and TensorFlow Hub 13. Converting from tf1.12 to tf2
14. Other Books You May Enjoy

Calculating the losses

We now need the losses between the contents and styles of the two images. We will be using the mean squared loss as follows. Notice here that the subtraction in image1 - image2 is element-wise between the two image arrays. This subtraction works because the images have been resized to the same size in load_image:

def rms_loss(image1,image2):
loss = tf.reduce_mean(input_tensor=tf.square(image1 - image2))
return loss

So next, we define our content_loss function. This is just the mean squared difference between what is named content and target in the function signature:

def content_loss(content, target):
return rms_loss(content, target)

The style loss is defined in terms of a quantity called a Gram matrix. A Gram matrix, also known as the metric, is the dot product of the style matrix with its own transpose. Since this means that each column of the image...

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