作者
Arash Fazl, Stephen Grossberg, Ennio Mingolla
发表日期
2009/2/1
来源
Cognitive psychology
卷号
58
期号
1
页码范围
1-48
出版商
Academic Press
简介
How does the brain learn to recognize an object from multiple viewpoints while scanning a scene with eye movements? How does the brain avoid the problem of erroneously classifying parts of different objects together? How are attention and eye movements intelligently coordinated to facilitate object learning? A neural model provides a unified mechanistic explanation of how spatial and object attention work together to search a scene and learn what is in it. The ARTSCAN model predicts how an object’s surface representation generates a form-fitting distribution of spatial attention, or “attentional shroud”. All surface representations dynamically compete for spatial attention to form a shroud. The winning shroud persists during active scanning of the object. The shroud maintains sustained activity of an emerging view-invariant category representation while multiple view-specific category representations are learned …
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