An exponential filter model predicts lightness illusions.

Front Hum Neurosci

Cognitive Neuroscience Group, Department of Psychology, University of Amsterdam Amsterdam, Netherlands ; Intelligent Systems Lab Amsterdam, Institute of Informatics, University of Amsterdam Amsterdam, Netherlands.

Published: July 2015

AI Article Synopsis

  • Lightness perception is affected by surrounding context, as shown in phenomena like the Simultaneous Contrast Illusion (SCI) and assimilation effects.
  • A new model based on image statistics and exponential filters with varying sizes and shapes was developed to explain both contrast and assimilation in lightness illusions.
  • The model demonstrated competitive predictive success in explaining lightness illusions, matching or exceeding the performance of prior models while showing that complex orientation selectivity is not required for accurate predictions.

Article Abstract

Lightness, or perceived reflectance of a surface, is influenced by surrounding context. This is demonstrated by the Simultaneous Contrast Illusion (SCI), where a gray patch is perceived lighter against a black background and vice versa. Conversely, assimilation is where the lightness of the target patch moves toward that of the bounding areas and can be demonstrated in White's effect. Blakeslee and McCourt (1999) introduced an oriented difference-of-Gaussian (ODOG) model that is able to account for both contrast and assimilation in a number of lightness illusions and that has been subsequently improved using localized normalization techniques. We introduce a model inspired by image statistics that is based on a family of exponential filters, with kernels spanning across multiple sizes and shapes. We include an optional second stage of normalization based on contrast gain control. Our model was tested on a well-known set of lightness illusions that have previously been used to evaluate ODOG and its variants, and model lightness values were compared with typical human data. We investigate whether predictive success depends on filters of a particular size or shape and whether pooling information across filters can improve performance. The best single filter correctly predicted the direction of lightness effects for 21 out of 27 illusions. Combining two filters together increased the best performance to 23, with asymptotic performance at 24 for an arbitrarily large combination of filter outputs. While normalization improved prediction magnitudes, it only slightly improved overall scores in direction predictions. The prediction performance of 24 out of 27 illusions equals that of the best performing ODOG variant, with greater parsimony. Our model shows that V1-style orientation-selectivity is not necessary to account for lightness illusions and that a low-level model based on image statistics is able to account for a wide range of both contrast and assimilation effects.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC4478851PMC
http://dx.doi.org/10.3389/fnhum.2015.00368DOI Listing

Publication Analysis

Top Keywords

lightness illusions
16
lightness
8
contrast assimilation
8
image statistics
8
model
7
illusions
6
exponential filter
4
filter model
4
model predicts
4
predicts lightness
4

Similar Publications

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!