Skip navigation

Search ETDs:

More Like This | More search options

Export: Refworks Refworks | RIS

Data Triage and Visual Analytics for Scientific Visualization

PDF Display Full Text | Download Full Text
11.74 MB PDF file

Degree
Doctor of Philosophy, Ohio State University, Computer Science and Engineering, .
Abstract

As the speed of computers continues to increase at a very fast rate, the size of data generated from scientific simulations has now reached petabytes ($10^{12}$ bytes) and beyond. Under such circumstances, no existing techniques can be used to perform effective data analysis at a full precision. To analyze large scale data sets, visual analytics techniques with effective summarization and flexible interface are crucial in assisting the exploration of data at different levels of detail. To improve data access efficiency, summarization and triage are important components for categorizing data items according to their saliency. This will allow the user to focus only on the relevant portion of data.

In this dissertation, several visualization and analysis techniques are presented to facilitate the analysis of multivariate time-varying data and flow fields. For multivariate time-varying data sets, data items are categorized based on the values over time to provide an effective overview of the time-varying phenomena. From the similarity to the user-specified feature, dynamic phenomena across multiple variables in different spatial and temporal domains can be explored.

To visualize flow fields, information theory is used to model the local flow complexity quantitatively. Based on the model, an information-aware visualization framework is designed to create images with different levels of visual focus according to the local flow complexity. By extending the measurement from object space to image space, visualization primitives can be further rearranged, leading to more effective visualization of salient flow features with less occlusion.

Subject Headings
Computer Science
Keywords
scientific visualization; information theory; multivariate data visualization; time-varying data visualization; flow visualization
Committee / Advisors
Han-Wei Shen, PhD (Advisor)
Roger A. Crawfis, PhD (Committee Chair)
Raghu Machiraju, PhD (Committee Chair)
Pages
204p.

Document number: osu1321889683
Permalink:

This ETD has been downloaded 70 times (through March 2013)