Computational techniques enabling the perception of virtual images exclusive to the retinal afterimage
February 13, 2025 Β· Declared Dead Β· π Big Data and Cognitive Computing
"No code URL or promise found in abstract"
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Authors
Staas de Jong, Gerrit van der Veer
arXiv ID
2502.09435
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.GR
Citations
2
Venue
Big Data and Cognitive Computing
Last Checked
4 months ago
Abstract
The retinal afterimage is a widely known effect in the human visual system, which has been studied and used in the context of a number of major art movements. Therefore, when considering the general role of computation in the visual arts, this begs the question whether this effect, too, may be induced using partly automated techniques. If so, it may become a computationally controllable ingredient of (interactive) visual art, and thus take its place among the many other aspects of visual perception which already have preceded it in this sense. The present moment provides additional inspiration to lay the groundwork for extending computer graphics in general with the retinal afterimage: Historically, we are in a phase where some head-mounted stereoscopic AR/VR technologies are now providing eye tracking by default, thereby allowing realtime monitoring of the processes of visual fixation that can induce the retinal afterimage. A logical starting point for general investigation is then shape display via the retinal afterimage, since shape recognition lends itself well to unambiguous reporting. Shape recognition, however, may also occur due to normal vision, which happens simultaneously. Carefully and rigorously excluding this possibility, we develop computational techniques enabling shape display exclusive to the retinal afterimage.
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