Back to Search Start Over

CoSi: Visual Comparison of Similarities in High-Dimensional Data Ensembles

Authors :
Heim, Anja
Gröller, Eduard
Heinzl, Christoph
Publication Year :
2021
Publisher :
The Eurographics Association, 2021.

Abstract

Comparative analysis of multivariate datasets, e.g. of advanced materials regarding the characteristics of internal structures (fibers, pores, etc.), is of crucial importance in various scientific disciplines. Currently domain experts in materials science mostly rely on sequential comparison of data using juxtaposition. Our work assists domain experts to perform detailed comparative analyses of large ensemble data in materials science applications. For this purpose, we developed a comparative visualization framework, that includes a tabular overview and three detailed visualization techniques to provide a holistic view on the similarities in the ensemble. We demonstrate the applicability of our framework on two specific usage scenarios and verify its techniques using a qualitative user study with 12 material experts. The insights gained from our work represent a significant advancement in the field of comparative material analysis of high-dimensional data. Our framework provides experts with a novel perspective on the data and eliminates the need for time-consuming sequential exploration of numerical data.<br />Vision, Modeling, and Visualization<br />Visual Parameter Space Analysis<br />117<br />124<br />Anja Heim, Eduard Gröller, and Christoph Heinzl<br />CCS Concepts: Human-centered computing --> Visual analytics; Applied computing --> Physical sciences and engineering

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........a03707206e5e131e272bca6663c87848
Full Text :
https://doi.org/10.2312/vmv.20211378