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Journal ArticleDOI

Visualization and Visual Analysis of Multifaceted Scientific Data: A Survey

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TLDR
This survey studies existing methods for visualization and interactive visual analysis of multifaceted scientific data and suggests new solutions for multirun and multimodel data as well as techniques that support a multitude of facets.
Abstract
Visualization and visual analysis play important roles in exploring, analyzing, and presenting scientific data. In many disciplines, data and model scenarios are becoming multifaceted: data are often spatiotemporal and multivariate; they stem from different data sources (multimodal data), from multiple simulation runs (multirun/ensemble data), or from multiphysics simulations of interacting phenomena (multimodel data resulting from coupled simulation models). Also, data can be of different dimensionality or structured on various types of grids that need to be related or fused in the visualization. This heterogeneity of data characteristics presents new opportunities as well as technical challenges for visualization research. Visualization and interaction techniques are thus often combined with computational analysis. In this survey, we study existing methods for visualization and interactive visual analysis of multifaceted scientific data. Based on a thorough literature review, a categorization of approaches is proposed. We cover a wide range of fields and discuss to which degree the different challenges are matched with existing solutions for visualization and visual analysis. This leads to conclusions with respect to promising research directions, for instance, to pursue new solutions for multirun and multimodel data as well as techniques that support a multitude of facets.

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Citations
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Feature-Based Visual Analytics for Studying Simulations of Dynamic Bi-Stable Spatial Systems

TL;DR: How visual analytics technology can help in analyzing simulation data of dynamic bi-stable spatial systems with the help of the feature-based approach was described and the scientists were able to understand how the spatial separation of proteins develops over time.
Journal ArticleDOI

Temporally Dense Exploration of Moving and Deforming Shapes

TL;DR: This approach for the dense visualization and temporal exploration of moving and deforming shapes from scientific experiments and simulations is presented, and provides the basis for interactive user navigation in the spatial and temporal domain in combination with traditional renderings.
Journal ArticleDOI

<i>GUCCI</i> - Guided Cardiac Cohort Investigation of Blood Flow Data

TL;DR: Guided Cardiac Cohort Investigation (GUCCI) as discussed by the authors provides a guided visual analytics workflow to analyze cohort-based measured blood flow data in the aorta, which is essential to characterize pathologies.
Book ChapterDOI

Visualizing the Bug Distribution Information Available in Software Bug Repositories

TL;DR: Data visualization techniques use visual objects (images) to represent the data effectively and helps in understanding the knowledge patterns, and is widely accepted in the field of data analysis for results representation.
Journal ArticleDOI

Space-Time Cube and Mixed Reality – New Approaches to Support Understanding Historical Landscape Changes

TL;DR: The usability evaluation of the mixed reality hologram showed the overall comfort of interactions, perception of the visual components of the space-time cube and determines advantageous features and limitations of the technology.
References
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Book

Self-Organizing Maps

TL;DR: The Self-Organising Map (SOM) algorithm was introduced by the author in 1981 as mentioned in this paper, and many applications form one of the major approaches to the contemporary artificial neural networks field, and new technologies have already been based on it.
Journal ArticleDOI

Exploratory data analysis

F. N. David, +1 more
- 01 Dec 1977 - 
Journal ArticleDOI

The Elements of Statistical Learning

Eric R. Ziegel
- 01 Aug 2003 - 
TL;DR: Chapter 11 includes more case studies in other areas, ranging from manufacturing to marketing research, and a detailed comparison with other diagnostic tools, such as logistic regression and tree-based methods.
Journal ArticleDOI

A Computer Movie Simulating Urban Growth in the Detroit Region

TL;DR: A Computer Movie Simulating Urban Growth in the Detroit Region as discussed by the authors was made to simulate urban growth in the city of Detroit, Michigan, United States of America, 1970, 1970.
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