Skip to main content

Visual Search in People with Macular Degeneration: A Virtual Reality Eye-Tracking Study.

Kempapidis, T., Mavridou, I., Seiss, E., Castle, C. L., Bradwell, D., Panchevski, F., Cox, S. and Gomes, R. S. M., 2025. Visual Search in People with Macular Degeneration: A Virtual Reality Eye-Tracking Study. In: Reyes-Lecuona, A., Zachmann, G., Bordegoni, M., Chen, J., Karaseitanidis, G., Pagani, A. and Bourdot, P., eds. Virtual Reality and Mixed Reality: 21st EuroXR International Conference, EuroXR 2024. Cham: Springer, 182-203.

Full text available as:

[thumbnail of splnproc2311_submiversion_2024_final.pdf] PDF
splnproc2311_submiversion_2024_final.pdf - Accepted Version
Restricted to Repository staff only until 27 November 2025.
Available under License Creative Commons Attribution Non-commercial.

751kB

DOI: 10.1007/978-3-031-78593-1_12

Abstract

This study is the first to explore the usability of a commercial off the shelf (COTS) VR headset for people with macular degeneration (MD) in the context of visual search. Fourteen participants were recruited; 9 fully sighted and 5 with sight loss due to MD. Firstly, a visual grid search task was presented where participants were asked to identify and discriminate virtual objects and shapes. Secondly, affective audio-visual videos were presented in VR to assess participants processing of affective information. The experimental procedure involved both a physical visual acuity Snellen test and a VR Snellen test conducted within a custom virtual environment. Most participants with macular degeneration (MD) reported increased visibility in VR. They were able to discriminate positive affective content and detect objects and shapes appearing at various locations across their entire field of view. Overall performance was linked to the level of visual impairment and whether it affected one or both eyes. Importantly, all participants successfully used the off-the-shelf VR headset. These findings provide preliminary insights into the usability of VR technologies for users with MD.

Item Type:Book Section
ISBN:9783031785924
Series Name:Lecture Notes in Computer Science
Volume:15445
ISSN:0302-9743
Additional Information:Athens, Greece, 27–29 November, 2024
Group:Faculty of Science & Technology
ID Code:40604
Deposited By: Symplectic RT2
Deposited On:28 Jan 2025 16:17
Last Modified:28 Jan 2025 16:17

Downloads

Downloads per month over past year

More statistics for this item...
Repository Staff Only -