SpatialRugs: A Compact Visualization of Space and Time for Analyzing Collective Movement Data
Publication date
2021-12
Editors
Advisors
Supervisors
Document Type
Article
Metadata
Show full item recordCollections
License
taverne
Abstract
Compact visualization techniques such as dense pixel displays find application in displaying spatio-temporal datasets in a space-efficient way. While mostly focusing on feature development, the depiction of spatial distributions of the movers in these techniques is often traded against better scalability towards the number of moving objects. We propose SpatialRugs, a technique that can be applied to reintroduce spatial positions in such approaches by applying 2D colormaps to determine object locations and which enables users to follow spatio-temporal developments even in non-spatial representations. Geared towards collective movement datasets, we evaluate the applicability of several color maps and discuss limitations. To mitigate perceptional artifacts, we also present and evaluate a custom, time-aware color smoothing method.
Keywords
Collective behavior visualization, Computers and graphics, Information visualization, Spatiotemporal data, Taverne, Software, Signal Processing, General Engineering, Human-Computer Interaction, Computer Vision and Pattern Recognition, Computer Graphics and Computer-Aided Design
Citation
Buchmüller, J F, Schlegel, U, Cakmak, E, Keim, D & Dimara, E 2021, 'SpatialRugs: A Compact Visualization of Space and Time for Analyzing Collective Movement Data', Computers & Graphics, vol. 101, pp. 23-34. https://doi.org/10.1016/j.cag.2021.08.003