Perceptual Thresholds for Radial Optic Flow Distortion in Near-Eye Stereoscopic Displays
February 02, 2024 Β· Declared Dead Β· π IEEE Transactions on Visualization and Computer Graphics
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Authors
Mohammad R. Saeedpour-Parizi, Niall L. Williams, Tim Wong, Phillip Guan, Dinesh Manocha, Ian M. Erkelens
arXiv ID
2402.07916
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.GR
Citations
3
Venue
IEEE Transactions on Visualization and Computer Graphics
Last Checked
4 months ago
Abstract
We provide the first perceptual quantification of user's sensitivity to radial optic flow artifacts and demonstrate a promising approach for masking this optic flow artifact via blink suppression. Near-eye HMDs allow users to feel immersed in virtual environments by providing visual cues, like motion parallax and stereoscopy, that mimic how we view the physical world. However, these systems exhibit a variety of perceptual artifacts that can limit their usability and the user's sense of presence in VR. One well-known artifact is the vergence-accommodation conflict (VAC). Varifocal displays can mitigate VAC, but bring with them other artifacts such as a change in virtual image size (radial optic flow) when the focal plane changes. We conducted a set of psychophysical studies to measure users' ability to perceive this radial flow artifact before, during, and after self-initiated blinks. Our results showed that visual sensitivity was reduced by a factor of 10 at the start and for ~70 ms after a blink was detected. Pre- and post-blink sensitivity was, on average, ~0.15% image size change during normal viewing and increased to ~1.5-2.0% during blinks. Our results imply that a rapid (under 70 ms) radial optic flow distortion can go unnoticed during a blink. Furthermore, our results provide empirical data that can be used to inform engineering requirements for both hardware design and software-based graphical correction algorithms for future varifocal near-eye displays. Our project website is available at https://gamma.umd.edu/RoF/.
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