Book Image

Mobile Deep Learning with TensorFlow Lite, ML Kit and Flutter

By : Anubhav Singh, Rimjhim Bhadani
Book Image

Mobile Deep Learning with TensorFlow Lite, ML Kit and Flutter

By: Anubhav Singh, Rimjhim Bhadani

Overview of this book

Deep learning is rapidly becoming the most popular topic in the mobile app industry. This book introduces trending deep learning concepts and their use cases with an industrial and application-focused approach. You will cover a range of projects covering tasks such as mobile vision, facial recognition, smart artificial intelligence assistant, augmented reality, and more. With the help of eight projects, you will learn how to integrate deep learning processes into mobile platforms, iOS, and Android. This will help you to transform deep learning features into robust mobile apps efficiently. You’ll get hands-on experience of selecting the right deep learning architectures and optimizing mobile deep learning models while following an application oriented-approach to deep learning on native mobile apps. We will later cover various pre-trained and custom-built deep learning model-based APIs such as machine learning (ML) Kit through Firebase. Further on, the book will take you through examples of creating custom deep learning models with TensorFlow Lite. Each project will demonstrate how to integrate deep learning libraries into your mobile apps, right from preparing the model through to deployment. By the end of this book, you’ll have mastered the skills to build and deploy deep learning mobile applications on both iOS and Android.
Table of Contents (13 chapters)

Understanding how image super-resolution works

The pursuit and desire to be able to make low-resolution images more detailed and of a higher resolution has been around for several decades. Super-resolution is a collection of techniques that are used to convert low-resolution images into very high-resolution images and is one of the most exciting fields of work for image processing engineers and researchers. Several approaches and methods have been built to achieve super-resolution of images, and they have all had varying levels of success toward their goal. However, in recent times, with the development of SRGANs, there has been a significant improvement regarding the amount of super-resolution that can be possible using any low-resolution image. 

But before we discuss SRGANs, let's learn about some concepts related to image super-resolution. ...