Investigating the Effect of Operation Mode and Manifestation on Physicalizations of Dynamic Processes
May 15, 2024 Β· Declared Dead Β· π Computer graphics forum (Print)
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Authors
Daniel Pahr, Henry Ehlers, Hsiang-Yun Wu, Manuela Waldner, Renata G. Raidou
arXiv ID
2405.09372
Category
cs.HC: Human-Computer Interaction
Citations
3
Venue
Computer graphics forum (Print)
Last Checked
4 months ago
Abstract
We conducted a study to systematically investigate the communication of complex dynamic processes along a two-dimensional design space, where the axes represent a representation's manifestation (physical or virtual) and operation (manual or automatic). We exemplify the design space on a model embodying cardiovascular pathologies, represented by a mechanism where a liquid is pumped into a draining vessel, with complications illustrated through modifications to the model. The results of a mixed-methods lab study with 28 participants show that both physical manifestation and manual operation have a strong positive impact on the audience's engagement. The study does not show a measurable knowledge increase with respect to cardiovascular pathologies using manually operated physical representations. However, subjectively, participants report a better understanding of the process-mainly through non-visual cues like haptics, but also auditory cues. The study also indicates an increased task load when interacting with the process, which, however, seems to play a minor role for the participants. Overall, the study shows a clear potential of physicalization for the communication of complex dynamic processes, which only fully unfold if observers have to chance to interact with the process.
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