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Python: Real World Machine Learning
book

Python: Real World Machine Learning

by Prateek Joshi, John Hearty, Bastiaan Sjardin, Luca Massaron, Alberto Boschetti
November 2016
Beginner to intermediate
941 pages
21h 55m
English
Packt Publishing
Content preview from Python: Real World Machine Learning

CNN's with an incremental approach

Now that we have a decent understanding of the architectures of CNNs, let's get our hands dirty in Keras and apply a CNN.

For this example, we will use the famous CIFAR-10 face image dataset, which is conveniently available within the Keras domain. The dataset consists of 60,000, 32 x 32 color images with 10 target classes consisting of an airplane, automobile, bird, cat, deer, dog, frog, horse, ship, and truck. This is a smaller dataset than the one that was used for the AlexNet example. For more information, you can refer to https://www.cs.toronto.edu/~kriz/cifar.html.

In this CNN, we will use the following architecture to classify the image according to the 10 classes that we specified:

input->convolution 1 (32,3,3)->convolution ...

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Publisher Resources

ISBN: 9781787123212Supplemental ContentPurchase Link