Information Theory in Scientific Visualization
Abstract
:1. Introduction
2. Visualization and Information Channel
3. Concepts of Information Theory
3.1. Entropy
3.2. Joint Entropy and Relative Entropy
3.3. Mutual Information and Conditional Entropy
3.4. Relationships among Information Theory Concepts
4. Applications of Information Theory in Scientific Visualization
4.1. View Selection for Volumetric Data
4.2. Streamline Seeding and Selection
4.3. Transfer Function for Multimodal Data
4.4. Selection of Representative Isosurfaces
4.5. LOD Selection for Multiresolution Volume Visualization
4.6. Time-varying and Multivariate Data Analysis
4.7. Information Channel between Objects and Viewpoints
5. Information Theory in Imaging and Graphics
6. Outlook for Future Research
Acknowledgements
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Wang, C.; Shen, H.-W. Information Theory in Scientific Visualization. Entropy 2011, 13, 254-273. https://doi.org/10.3390/e13010254
Wang C, Shen H-W. Information Theory in Scientific Visualization. Entropy. 2011; 13(1):254-273. https://doi.org/10.3390/e13010254
Chicago/Turabian StyleWang, Chaoli, and Han-Wei Shen. 2011. "Information Theory in Scientific Visualization" Entropy 13, no. 1: 254-273. https://doi.org/10.3390/e13010254
APA StyleWang, C., & Shen, H.-W. (2011). Information Theory in Scientific Visualization. Entropy, 13(1), 254-273. https://doi.org/10.3390/e13010254