Article

A Bayesian model of distance perception from ocular convergence

Details

Citation

Scarfe P & Hibbard PB (2025) A Bayesian model of distance perception from ocular convergence. PLOS Computational Biology, 21 (10), Art. No.: e1013506. https://doi.org/10.1371/journal.pcbi.1013506

Abstract
Ocular convergence is one of the critical cues from which to estimate the absolute distance to objects in the world, because unlike most other distance cues a one-to-one mapping exists between absolute distance and ocular convergence. However, even when accurately converging their eyes on an object, humans tend to underestimate its distance, particularly for more distant objects. This systematic bias in distance perception has yet to be explained and questions the utility of vergence as an absolute distance cue. Here we present a probabilistic geometric model that shows how distance underestimation can be explained by the visual system estimating the most likely distance in the world to have caused an accurate, but noisy, ocular convergence signal. Furthermore, we find that the noise in the vergence signal needed to account for human distance underestimation is comparable with that experimentally measured. Critically, our results depend on the formulation of a likelihood function that takes account of the generative function relating distance to ocular convergence.

Keywords
Eyes; Sensory perception; Perception; Sensory cues; Probability density; Vision; Distance measurement; Statistical distributions

Journal
PLOS Computational Biology: Volume 21, Issue 10

StatusPublished
Publication date31/10/2025
Publication date online31/10/2025
Date accepted by journal09/09/2025
URLhttp://hdl.handle.net/1893/37447
ISSN1553-734X
eISSN1553-7358

People (1)

Professor Paul Hibbard

Professor Paul Hibbard

Professor in Psychology, Psychology

Files (1)