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OpenGL Data Visualization Cookbook

You're reading from   OpenGL Data Visualization Cookbook Over 35 hands-on recipes to create impressive, stunning visuals for a wide range of real-time, interactive applications using OpenGL

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Product type Paperback
Published in Aug 2015
Publisher Packt
ISBN-13 9781782169727
Length 298 pages
Edition 1st Edition
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Table of Contents (11) Chapters Close

Preface 1. Getting Started with OpenGL 2. OpenGL Primitives and 2D Data Visualization FREE CHAPTER 3. Interactive 3D Data Visualization 4. Rendering 2D Images and Videos with Texture Mapping 5. Rendering of Point Cloud Data for 3D Range-sensing Cameras 6. Rendering Stereoscopic 3D Models using OpenGL 7. An Introduction to Real-time Graphics Rendering on a Mobile Platform using OpenGL ES 3.0 8. Interactive Real-time Data Visualization on Mobile Devices 9. Augmented Reality-based Visualization on Mobile or Wearable Platforms Index

2D visualization of 3D/4D datasets

We have now learned multiple methods to generate plots on screen using points and lines. In the last section, we will demonstrate how to visualize a million data points in a 3D dataset using OpenGL in real time. A common strategy to visualize a complex 3D dataset is to encode the third dimension (for example, the z dimension) in the form of a heat map with a desirable color scheme. As an example, we show a heat map of a 2D Gaussian function with its height z, encoded using a simple color scheme. In general, a 2-D Gaussian function, 2D visualization of 3D/4D datasets, is defined as follows:

2D visualization of 3D/4D datasets

Here, A is the amplitude (2D visualization of 3D/4D datasets) of the distribution centered at 2D visualization of 3D/4D datasets and 2D visualization of 3D/4D datasets are the standard deviations (spread) of the distribution in the x and y directions. To make this demo more interesting and more visually appealing, we vary the standard deviation or sigma term (equally in the x and y directions) over time. Indeed, we can apply the same method to visualize very complex 3D datasets.

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OpenGL Data Visualization Cookbook
Published in: Aug 2015
Publisher: Packt
ISBN-13: 9781782169727
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