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Neural Networks with Keras Cookbook

Neural Networks with Keras Cookbook

By : V Kishore Ayyadevara
3.3 (8)
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Neural Networks with Keras Cookbook

Neural Networks with Keras Cookbook

3.3 (8)
By: V Kishore Ayyadevara

Overview of this book

This book will take you from the basics of neural networks to advanced implementations of architectures using a recipe-based approach. We will learn about how neural networks work and the impact of various hyper parameters on a network's accuracy along with leveraging neural networks for structured and unstructured data. Later, we will learn how to classify and detect objects in images. We will also learn to use transfer learning for multiple applications, including a self-driving car using Convolutional Neural Networks. We will generate images while leveraging GANs and also by performing image encoding. Additionally, we will perform text analysis using word vector based techniques. Later, we will use Recurrent Neural Networks and LSTM to implement chatbot and Machine Translation systems. Finally, you will learn about transcribing images, audio, and generating captions and also use Deep Q-learning to build an agent that plays Space Invaders game. By the end of this book, you will have developed the skills to choose and customize multiple neural network architectures for various deep learning problems you might encounter.
Table of Contents (18 chapters)
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Gender classification of the person in image using the VGG16 architecture-based model

In the previous section on gender classification using CNN, we saw that when we build a CNN model from scratch, we could encounter some of the following scenarios:

  • The number of images that were passed is not sufficient for the model to learn
  • Convolutions might not be learning all the features in our images when the images are big in size

The first problem could be tackled by performing our analysis on a large dataset. The second one could be tackled by training a larger network on the larger dataset for a longer number of epochs.

However, while we are able to perform all of this, more often than not, we do not have the amount of data that is needed to perform such an analysis. Transfer learning using pre-trained models comes to the rescue in such scenarios.

ImageNet is a popular competition...

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