Book Image

Machine Learning Projects for Mobile Applications

By : Karthikeyan NG
Book Image

Machine Learning Projects for Mobile Applications

By: Karthikeyan NG

Overview of this book

Machine learning is a technique that focuses on developing computer programs that can be modified when exposed to new data. We can make use of it for our mobile applications and this book will show you how to do so. The book starts with the basics of machine learning concepts for mobile applications and how to get well equipped for further tasks. You will start by developing an app to classify age and gender using Core ML and Tensorflow Lite. You will explore neural style transfer and get familiar with how deep CNNs work. We will also take a closer look at Google’s ML Kit for the Firebase SDK for mobile applications. You will learn how to detect handwritten text on mobile. You will also learn how to create your own Snapchat filter by making use of facial attributes and OpenCV. You will learn how to train your own food classification model on your mobile; all of this will be done with the help of deep learning techniques. Lastly, you will build an image classifier on your mobile, compare its performance, and analyze the results on both mobile and cloud using TensorFlow Lite with an RCNN. By the end of this book, you will not only have mastered the concepts of machine learning but also learned how to resolve problems faced while building powerful apps on mobiles using TensorFlow Lite, Caffe2, and Core ML.
Table of Contents (16 chapters)
Title Page
Dedication
Packt Upsell
Contributors
Preface
Index

Convolutional Neural Networks 


One of the earliest applications of neural networks was demonstrated with Optical Character Recognition (OCR), but they were limited by time, computational resources, and other challenges faced when training bigger networks.

CNN is a part of feedforward neural networks, which are influenced by biological processes. This works in the same way that neurons work in the brain, as well as the connectivity patterns between them. These neurons will respond to stimuli that are only in a specific region in the visual field, known as the receptive field. When multiple neurons overlap each other, they will cover the whole visual field. The following diagram shows the CNN architecture:

CNN has an input layer and one output layer, as well as multiple hidden layers. These hidden layers consist of pooling layers, convolutional layers, normalization layers, and fully connected layers. Convolutional layers apply a convolution operation and pass the result to the next layer. This...