Book Image

Practical Convolutional Neural Networks

By : Mohit Sewak, Md. Rezaul Karim, Pradeep Pujari
Book Image

Practical Convolutional Neural Networks

By: Mohit Sewak, Md. Rezaul Karim, Pradeep Pujari

Overview of this book

Convolutional Neural Network (CNN) is revolutionizing several application domains such as visual recognition systems, self-driving cars, medical discoveries, innovative eCommerce and more.You will learn to create innovative solutions around image and video analytics to solve complex machine learning and computer vision related problems and implement real-life CNN models. This book starts with an overview of deep neural networkswith the example of image classification and walks you through building your first CNN for human face detector. We will learn to use concepts like transfer learning with CNN, and Auto-Encoders to build very powerful models, even when not much of supervised training data of labeled images is available. Later we build upon the learning achieved to build advanced vision related algorithms for object detection, instance segmentation, generative adversarial networks, image captioning, attention mechanisms for vision, and recurrent models for vision. By the end of this book, you should be ready to implement advanced, effective and efficient CNN models at your professional project or personal initiatives by working on complex image and video datasets.
Table of Contents (11 chapters)

Build Your First CNN and Performance Optimization

A convolutional neural network (CNN) is a type of feed-forward neural network (FNN) in which the connectivity pattern between its neurons is inspired by an animal's visual cortex. In the last few years, CNNs have demonstrated superhuman performance in image search services, self-driving cars, automatic video classification, voice recognition, and natural language processing (NLP).

Considering these motivations, in this chapter, we will construct a simple CNN model for image classification from scratch, followed by some theoretical aspects, such as convolutional and pooling operations. Then we will discuss how to tune hyperparameters and optimize the training time of CNNs for improved classification accuracy. Finally, we will build the second CNN model by considering some best practices. In a nutshell, the following topics...