Search icon CANCEL
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon
Arrow up icon
GO TO TOP
Learn OpenCV 4 by Building Projects

You're reading from   Learn OpenCV 4 by Building Projects Build real-world computer vision and image processing applications with OpenCV and C++

Arrow left icon
Product type Paperback
Published in Nov 2018
Publisher Packt
ISBN-13 9781789341225
Length 310 pages
Edition 2nd Edition
Languages
Tools
Arrow right icon
Authors (3):
Arrow left icon
David Millán Escrivá David Millán Escrivá
Author Profile Icon David Millán Escrivá
David Millán Escrivá
Prateek Joshi Prateek Joshi
Author Profile Icon Prateek Joshi
Prateek Joshi
Vinícius G. Mendonça Vinícius G. Mendonça
Author Profile Icon Vinícius G. Mendonça
Vinícius G. Mendonça
Arrow right icon
View More author details
Toc

Table of Contents (14) Chapters Close

Preface 1. Getting Started with OpenCV FREE CHAPTER 2. An Introduction to the Basics of OpenCV 3. Learning Graphical User Interfaces 4. Delving into Histogram and Filters 5. Automated Optical Inspection, Object Segmentation, and Detection 6. Learning Object Classification 7. Detecting Face Parts and Overlaying Masks 8. Video Surveillance, Background Modeling, and Morphological Operations 9. Learning Object Tracking 10. Developing Segmentation Algorithms for Text Recognition 11. Text Recognition with Tesseract 12. Deep Learning with OpenCV 13. Other Books You May Enjoy

How do humans understand image content?

If you look around, you will see a lot of objects. You encounter many different objects every day, and you recognize them almost instantaneously without any effort. When you see a chair, you don't wait for a few minutes before realizing that it is in fact a chair. You just know that it's a chair right away.

Computers, on the other hand, find it very difficult to do this task. Researchers have been working for many years to find out why computers are not as good as we are at this.

To get an answer to that question, we need to understand how humans do it. The visual data processing happens in the ventral visual stream. This ventral visual stream refers to the pathway in our visual system that is associated with object recognition. It is basically a hierarchy of areas in our brain that helps us recognize objects.

Humans can recognize different objects effortlessly, and can cluster similar objects together. We can do this because we have developed some sort of invariance toward objects of the same class. When we look at an object, our brain extracts the salient points in such a way that factors such as orientation, size, perspective, and illumination don't matter.

A chair that is double the normal size and rotated by 45 degrees is still a chair. We can recognize it easily because of the way we process it. Machines cannot do that so easily. Humans tend to remember an object based on its shape and important features. Regardless of how the object is placed, we can still recognize it.

In our visual system, we build up these hierarchical invariances with respect to position, scale, and viewpoint that help us to be very robust. If you look deeper into our system, you will see that humans have cells in their visual cortex that can respond to shapes such as curves and lines.

As we move further along our ventral stream, we will see more complex cells that are trained to respond to more complex objects such as trees, gates, and so on. The neurons along our ventral stream tend to show an increase in the size of the receptive field. This is coupled with the fact that the complexity of their preferred stimuli increases as well.

Why is it difficult for machines to understand image content?

We now understand how visual data enters the human visual system, and how our system processes it. The issue is that we still don't fully understand how our brain recognizes and organizes this visual data. In machine learning, we just extract some features from images, and ask the computers to learn them using algorithms. We still have these variations, such as shape, size, perspective, angle, illumination, occlusion, and so on.

For example, the same chair looks very different to a machine when you look at it from the profile view. Humans can easily recognize that it's a chair, regardless of how it's presented to us. So, how do we explain this to our machines?

One way to do this would be to store all the different variations of an object, including sizes, angles, perspectives, and so on. But this process is cumbersome and time-consuming. Also, it's actually not possible to gather data that can encompass every single variation. The machines would consume a huge amount of memory and a lot of time to build a model that can recognize these objects.

Even with all this, if an object is partially occluded, computers still won't recognize it. This is because they think this is a new object. So when we build a computer vision library, we need to build the underlying functional blocks that can be combined in many different ways to formulate complex algorithms.

OpenCV provides a lot of these functions, and they are highly optimized. So once we understand what OpenCV is capable of, we can use it effectively to build interesting applications.

Let's go ahead and explore that in the next section.

You have been reading a chapter from
Learn OpenCV 4 by Building Projects - Second Edition
Published in: Nov 2018
Publisher: Packt
ISBN-13: 9781789341225
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at $19.99/month. Cancel anytime