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Article Dans Une Revue Frontiers in Psychology Année : 2016

Neural computation of surface border ownership and relative surface depth from ambiguous contrast inputs

Résumé

The segregation of image parts into foreground and background is an important aspect of the neural computation of 3D scene perception. To achieve such segregation, the brain needs information about border ownership; that is, the belongingness of a contour to a specific surface represented in the image. This article presents psychophysical data derived from 3D percepts of figure and ground that were generated by presenting 2D images composed of spatially disjoint shapes that pointed inward or outward relative to the continuous boundaries that they induced along their collinear edges. The shapes in some images had the same contrast (black or white) with respect to the background gray. Other images included opposite contrasts along each induced continuous boundary. Results show that figure-ground judgment probabilities in response to these ambiguous displays are determined by the orientation of contrasts only, not by their relative contrasts, despite the fact that many border ownership cells in cortical area V2 respond to a preferred relative contrast. The FACADE and 3D LAMINART models are used to explain these data.
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Dates et versions

hal-01202930 , version 1 (22-09-2015)

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Birgitta Dresp, Stephen Grossberg. Neural computation of surface border ownership and relative surface depth from ambiguous contrast inputs. Frontiers in Psychology, 2016, ⟨10.3389/fpsyg.2016.01102⟩. ⟨hal-01202930⟩
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