Exploiting Colorimetry for Fidelity in Data Visualization
February 27, 2020 Β· Declared Dead Β· π Chemistry of Materials
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Authors
M. J. Waters, J. M. Walker, C. T. Nelson, D. Joester, J. M. Rondinelli
arXiv ID
2002.12228
Category
cs.HC: Human-Computer Interaction
Cross-listed
cond-mat.mtrl-sci,
cs.GR
Citations
10
Venue
Chemistry of Materials
Last Checked
4 months ago
Abstract
Advances in multimodal characterization methods fuel a generation of increasing immense hyper-dimensional datasets. Color mapping is employed for conveying higher dimensional data in two-dimensional (2D) representations for human consumption without relying on multiple projections. How one constructs these color maps, however, critically affects how accurately one perceives data. For simple scalar fields, perceptually uniform color maps and color selection have been shown to improve data readability and interpretation across research fields. Here we review core concepts underlying the design of perceptually uniform color map and extend the concepts from scalar fields to two-dimensional vector fields and three-component composition fields frequently found in materials-chemistry research to enable high-fidelity visualization. We develop the software tools PAPUC and CMPUC to enable researchers to utilize these colorimetry principles and employ perceptually uniform color spaces for rigorously meaningful color mapping of higher dimensional data representations. Last, we demonstrate how these approaches deliver immediate improvements in data readability and interpretation in microscopies and spectroscopies routinely used in discerning materials structure, chemistry, and properties.
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