Pseudo-Haptics Survey: Human-Computer Interaction in Extended Reality & Teleoperation
June 03, 2024 Β· Declared Dead Β· π IEEE Access
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Authors
Rui Xavier, JosΓ© LuΓs Silva, Rodrigo Ventura, Joaquim Jorge
arXiv ID
2406.01102
Category
cs.HC: Human-Computer Interaction
Citations
10
Venue
IEEE Access
Last Checked
4 months ago
Abstract
Pseudo-haptic techniques are becoming increasingly popular in human-computer interaction. They replicate haptic sensations by leveraging primarily visual feedback rather than mechanical actuators. These techniques bridge the gap between the real and virtual worlds by exploring the brain's ability to integrate visual and haptic information. One of the many advantages of pseudo-haptic techniques is that they are cost-effective, portable, and flexible. They eliminate the need for direct attachment of haptic devices to the body, which can be heavy and large and require a lot of power and maintenance. Recent research has focused on applying these techniques to extended reality and mid-air interactions. To better understand the potential of pseudo-haptic techniques, the authors developed a novel taxonomy encompassing tactile feedback, kinesthetic feedback, and combined categories in multimodal approaches, ground not covered by previous surveys. This survey highlights multimodal strategies and potential avenues for future studies, particularly regarding integrating these techniques into extended reality and collaborative virtual environments.
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