Book Image

Learning OpenCV 3 Application Development

By : Samyak Datta
Book Image

Learning OpenCV 3 Application Development

By: Samyak Datta

Overview of this book

Computer vision and machine learning concepts are frequently used in practical computer vision based projects. If you’re a novice, this book provides the steps to build and deploy an end-to-end application in the domain of computer vision using OpenCV/C++. At the outset, we explain how to install OpenCV and demonstrate how to run some simple programs. You will start with images (the building blocks of image processing applications), and see how they are stored and processed by OpenCV. You’ll get comfortable with OpenCV-specific jargon (Mat Point, Scalar, and more), and get to know how to traverse images and perform basic pixel-wise operations. Building upon this, we introduce slightly more advanced image processing concepts such as filtering, thresholding, and edge detection. In the latter parts, the book touches upon more complex and ubiquitous concepts such as face detection (using Haar cascade classifiers), interest point detection algorithms, and feature descriptors. You will now begin to appreciate the true power of the library in how it reduces mathematically non-trivial algorithms to a single line of code! The concluding sections touch upon OpenCV’s Machine Learning module. You will witness not only how OpenCV helps you pre-process and extract features from images that are relevant to the problems you are trying to solve, but also how to use Machine Learning algorithms that work on these features to make intelligent predictions from visual data!
Table of Contents (16 chapters)
Learning OpenCV 3 Application Development
Credits
About the Author
About the Reviewer
www.PacktPub.com
Preface

Supervised and unsupervised learning


Now that we know what machine learning involves-learning a set of rules (or building a model) by looking at examples and then using these rules to work out answers for previously unseen data-let's dig a little deeper. In this section, we will discuss two major categories of learning algorithms-supervised and unsupervised learning. These two categories differ in the nature and type of data being presented to the learning algorithm.

Instead of working with formal definitions, let's go with examples. Let's say that we are interested in building a machine learning system that can differentiate between the images of cats and dogs. That is, given an image, our algorithm should tell us whether the picture is that of a cat or a dog. Following the general guidelines that we laid out in the previous section, we have to present our system with a set of example images from where the learning will take place. For such a problem, we present to our system, what are known...