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Computer Vision with OpenCV 3 and Qt5

You're reading from   Computer Vision with OpenCV 3 and Qt5 Build visually appealing, multithreaded, cross-platform computer vision applications

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Product type Paperback
Published in Jan 2018
Publisher Packt
ISBN-13 9781788472395
Length 486 pages
Edition 1st Edition
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Author (1):
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Amin Ahmadi Tazehkandi Amin Ahmadi Tazehkandi
Author Profile Icon Amin Ahmadi Tazehkandi
Amin Ahmadi Tazehkandi
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Table of Contents (14) Chapters Close

Preface 1. Introduction to OpenCV and Qt FREE CHAPTER 2. Creating Our First Qt and OpenCV Project 3. Creating a Comprehensive Qt+OpenCV Project 4. Mat and QImage 5. The Graphics View Framework 6. Image Processing in OpenCV 7. Features and Descriptors 8. Multithreading 9. Video Analysis 10. Debugging and Testing 11. Linking and Deployment 12. Qt Quick Applications 13. Other Books You May Enjoy

MeanShift and CamShift


What we learned until now in this chapter, apart from the use cases that we already saw, was meant to prepare us for correctly using the and CamShift algorithms, since they extensively benefit from histograms and back-projection images. But what are the and CAMShift algorithms?

Let's start with the MeanShift and then move on to CamShift, which is basically the enhanced version of the same algorithm. So, a very practical definition for MeanShift (as it is stated in the current OpenCV documentation) is the following:

Finds an object on a back projection image

That's quite a simple yet practical definition of the MeanShift algorithm, and we are going to stick to that more or less when we work with it. However, it's worth noting the underlying algorithm, since it helps with using it easily and much more efficiently. To start describing how MeanShift works, first, we need to think about the white pixels in a back-projection image (or binary images in general) as scattered...

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