AI Article Synopsis

  • Understanding visual texture is crucial for early vision processes, particularly regarding how we perceive image statistics in various textures with different gray levels and spatial correlations.
  • The analysis reveals that our sensitivity to positive and negative correlations in textures operates independently of the correlation's sign, and that different correlation types interact in a quadratic manner.
  • A computational model, grounded in previous research on texture sensitivity, effectively explains key observations from the study, including independence of sign, quadratic interactions, and the influence of gray-level distribution.

Article Abstract

Analysis of visual texture is important for many key steps in early vision. We study visual sensitivity to image statistics in three families of textures that include multiple gray levels and correlations in two spatial dimensions. Sensitivities to positive and negative correlations are approximately independent of correlation sign, and signals from different kinds of correlations combine quadratically. We build a computational model, fully constrained by prior studies of sensitivity to uncorrelated textures and black-and-white textures with spatial correlations. The model accounts for many features of the new data, including sign-independence, quadratic combination, and the dependence on gray-level distribution.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9971653PMC
http://dx.doi.org/10.1364/JOSAA.472553DOI Listing

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