Swarm manipulation: An efficient and accurate technique for multi-object manipulation in virtual reality
October 24, 2024 Β· Declared Dead Β· π Computers & graphics
"No code URL or promise found in abstract"
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Authors
Xiang Li, Jin-Du Wang, John J. Dudley, Per Ola Kristensson
arXiv ID
2410.18924
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.RO
Citations
8
Venue
Computers & graphics
Last Checked
4 months ago
Abstract
The theory of swarm control shows promise for controlling multiple objects, however, scalability is hindered by cost constraints, such as hardware and infrastructure. Virtual Reality (VR) can overcome these limitations, but research on swarm interaction in VR is limited. This paper introduces a novel Swarm Manipulation interaction technique and compares it with two baseline techniques: Virtual Hand and Controller (ray-casting). We evaluated these techniques in a user study ($N$ = 12) in three tasks (selection, rotation, and resizing) across five conditions. Our results indicate that Swarm Manipulation yielded superior performance, with significantly faster speeds in most conditions across the three tasks. It notably reduced resizing size deviations but introduced a trade-off between speed and accuracy in the rotation task. Additionally, we conducted a follow-up user study ($N$ = 6) using Swarm Manipulation in two complex VR scenarios and obtained insights through semi-structured interviews, shedding light on optimized swarm control mechanisms and perceptual changes induced by this interaction paradigm. These results demonstrate the potential of the Swarm Manipulation technique to enhance the usability and user experience in VR compared to conventional manipulation techniques. In future studies, we aim to understand and improve swarm interaction via internal swarm particle cooperation.
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