Literature DB >> 16768360

Surrounding suppression and facilitation in the determination of border ownership.

Ko Sakai1, Haruka Nishimura.   

Abstract

Contextual modulation reported in early- to intermediate-level visual areas could be an essential component to signal border ownership (BO) that specifies the direction of figure along a contour. The surrounding regions that evoke significant suppression or facilitation are highly localized and asymmetric with respect to the center of the classical receptive field (CRF). We propose a hypothesis that such surrounding modulation is a basis for BO-selectivity. Although this idea has been discussed for several years, it is uncertain how many of a vast variety of surrounding organizations could signal correctly the direction of ownership, and how many could signal consistently for various stimuli. We carried out computationally a population study of the surrounding effects to investigate how many cells exhibit effective and consistent BO signals. We tested hundreds of various organizations, and found that most of the asymmetric, iso-orientation suppressive regions, regardless of position or size, lead to surprisingly high consistency in the direction of ownership for various stimuli. The combinations of iso-orientation suppression and cross-orientation facilitation indicate both high robustness and consistency in the ownership determination. We constructed a model for BO-selective neurons based on the surrounding effects, and investigated whether the model reproduces major characteristics of the neuronal responses, including a variety in the BO selectivity among neurons, consistency with respect to various stimuli, invariance to stimulus size, and co-selectivity to BO and contrast. The model reproduced successfully the major characteristics of BO-selective neurons.

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Mesh:

Year:  2006        PMID: 16768360     DOI: 10.1162/jocn.2006.18.4.562

Source DB:  PubMed          Journal:  J Cogn Neurosci        ISSN: 0898-929X            Impact factor:   3.225


  20 in total

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7.  Feed-forward segmentation of figure-ground and assignment of border-ownership.

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8.  Local spectral anisotropy is a valid cue for figure-ground organization in natural scenes.

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9.  Border-ownership coding.

Authors:  Jonathan R Williford; Rudiger von der Heydt
Journal:  Scholarpedia J       Date:  2013

10.  Correspondence between Monkey Visual Cortices and Layers of a Saliency Map Model Based on a Deep Convolutional Neural Network for Representations of Natural Images.

Authors:  Nobuhiko Wagatsuma; Akinori Hidaka; Hiroshi Tamura
Journal:  eNeuro       Date:  2021-02-09
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