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OpenCV By Example

OpenCV By Example

By : Joshi, Millán Escrivá, Vinícius G. Mendonça
3.8 (5)
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OpenCV By Example

OpenCV By Example

3.8 (5)
By: Joshi, Millán Escrivá, Vinícius G. Mendonça

Overview of this book

Open CV is a cross-platform, free-for-use library that is primarily used for real-time Computer Vision and image processing. It is considered to be one of the best open source libraries that helps developers focus on constructing complete projects on image processing, motion detection, and image segmentation. Whether you are completely new to the concept of Computer Vision or have a basic understanding of it, this book will be your guide to understanding the basic OpenCV concepts and algorithms through amazing real-world examples and projects. Starting from the installation of OpenCV on your system and understanding the basics of image processing, we swiftly move on to creating optical flow video analysis or text recognition in complex scenes, and will take you through the commonly used Computer Vision techniques to build your own Open CV projects from scratch. By the end of this book, you will be familiar with the basics of Open CV such as matrix operations, filters, and histograms, as well as more advanced concepts such as segmentation, machine learning, complex video analysis, and text recognition.
Table of Contents (13 chapters)
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12
Index

Feature-based tracking


Feature-based tracking refers to tracking individual feature points across successive frames in the video. The advantage here is that we don't have to detect feature points in every single frame. We can just detect them once and keep tracking them after that. This is more efficient as compared to running the detector on every frame. We use a technique called optical flow to track these features. Optical flow is one of the most popular techniques in Computer Vision. We choose a bunch of feature points, and track them through the video stream. When we detect the feature points, we compute the displacement vectors and show the motion of those keypoints between consecutive frames. These vectors are called motion vectors.

A motion vector for a particular point is just a directional line that indicates where that point has moved as compared to the previous frame. Different methods are used to detect these motion vectors. The two most popular algorithms are the Lucas-Kanade...

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