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OpenCV Computer Vision with Java

You're reading from   OpenCV Computer Vision with Java Create multiplatform computer vision desktop and web applications using the combination of OpenCV and Java

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Product type Paperback
Published in Jul 2015
Publisher
ISBN-13 9781783283972
Length 174 pages
Edition 1st Edition
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Author (1):
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Daniel Lelis Baggio Daniel Lelis Baggio
Author Profile Icon Daniel Lelis Baggio
Daniel Lelis Baggio
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Table of Contents (9) Chapters Close

Preface 1. Setting Up OpenCV for Java FREE CHAPTER 2. Handling Matrices, Files, Cameras, and GUIs 3. Image Filters and Morphological Operators 4. Image Transforms 5. Object Detection Using Ada Boost and Haar Cascades 6. Detecting Foreground and Background Regions and Depth with a Kinect Device 7. OpenCV on the Server Side Index

The boosting theory


The problem of detecting a face in an image can be posed in a simpler way. We could iterate the whole image through several smaller windows and create a classifier that will tell whether a window is a face or not. The windows that correctly identify the face will be the coordinates of face detection.

Now, what exactly is a classifier and how can it be built? In machine learning, the problem of classification has been deeply explored and it is posed as the identification of which of the set of categories a given observation belongs to, based on a previously trained set of known category memberships. This could be something like if a given image belongs to the banana, apple, or grape category, for instance, in a fruit classification application. In the case of face detection, there are two categories—face and non-face.

This section describes a meta-algorithm, which is basically a templated algorithm to create a strong classifier using a set of weak learners. These weak learners...

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