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Regular version of the site
ФКН
Book
2023 Fifth International Conference Neurotechnologies and Neurointerfaces (CNN), 18-20 september.2023

Корякина М. М., Агранович О. Е., Bermúdez-Margaretto B. et al.

IEEE, 2023.

Article
Shimmering emerging adulthood: in search of the invariant IDEA model for collectivistic countries

Yerofeyeva V., Wang P., Yang Y. et al.

Frontiers in Psychology. 2024. No. 15.

Book chapter
Modeling Intermittent Protest Campaigns

Petrov A., Sergey Zheglov, Akhremenko A. S.

In bk.: 16th International Conference Management of large-scale system development (MLSD). IEEE, 2023. Ch. 1. P. 1-5.

Working paper
Stress Resilience (Proprioceptive and Verbal Individual Differences) in Onco-Patients, Sportsmen and Controls

Liutsko L., Malova Y., Vinokurova E. et al.

public health and health services. 20944. MDPI, 2023

New article "Ensemble summary statistics as a basis for rapid visual categorization" by Igor Utochkin

New theoretical paper by Igor Utochkin on ensembles is now published in Journal of Vision. He tried to explain how our visual system uses summary statistics to transform the continuous variation of visible features into discrete categories. This aids our ability to see multiple items as representing same or different types of objects (say, leaves on a tree or apples among these leaves) at a moment.

Abstract

Ensemble summary statistics represent multiple objects on the high level of abstraction—that is, without representing individual features and ignoring spatial organization. This makes them especially useful for the rapid visual categorization of multiple objects of different types that are intermixed in space. Rapid categorization implies our ability to judge at one brief glance whether all visible objects represent different types or just variants of one type. A framework presented here states that processes resembling statistical tests can underlie that categorization. At an early stage (primary categorization), when independent ensemble properties are distributed along a single sensory dimension, the shape of that distribution is tested in order to establish whether all features can be represented by a single or multiple peaks. When primary categories are separated, the visual system either reiterates the shape test to recognize subcategories (in-depth processing) or implements mean comparison tests to match several primary categories along a new dimension. Rapid categorization is not free from processing limitations; the role of selective attention in categorization is discussed in light of these limitations.

Utochkin, I. S. (2015). Ensemble summary statistics as a basis for rapid visual categorization. Journal of Vision, 15(4), 8. doi: 10.1167/15.4.8