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视图不变物体类别学习、识别与搜索:基于表面的注意力罩如何协调空间和物体注意力。

View-invariant object category learning, recognition, and search: how spatial and object attention are coordinated using surface-based attentional shrouds.

作者信息

Fazl Arash, Grossberg Stephen, Mingolla Ennio

机构信息

Department of Cognitive and Neural Systems, Center for Adaptive Systems and Center of Excellence for Learning in Education, Science, and Technology, Boston University, 677 Beacon Street, Boston, MA 02215, USA.

出版信息

Cogn Psychol. 2009 Feb;58(1):1-48. doi: 10.1016/j.cogpsych.2008.05.001. Epub 2008 Jul 23.

Abstract

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 and are linked through associative learning to the view-invariant object category. The shroud also helps to restrict scanning eye movements to salient features on the attended object. Object attention plays a role in controlling and stabilizing the learning of view-specific object categories. Spatial attention hereby coordinates the deployment of object attention during object category learning. Shroud collapse releases a reset signal that inhibits the active view-invariant category in the What cortical processing stream. Then a new shroud, corresponding to a different object, forms in the Where cortical processing stream, and search using attention shifts and eye movements continues to learn new objects throughout a scene. The model mechanistically clarifies basic properties of attention shifts (engage, move, disengage) and inhibition of return. It simulates human reaction time data about object-based spatial attention shifts, and learns with 98.1% accuracy and a compression of 430 on a letter database whose letters vary in size, position, and orientation. The model provides a powerful framework for unifying many data about spatial and object attention, and their interactions during perception, cognition, and action.

摘要

在通过眼球运动扫视场景时,大脑是如何学会从多个视角识别物体的?大脑如何避免将不同物体的部分错误分类的问题?注意力和眼球运动是如何智能协调以促进物体学习的?一种神经模型提供了一个统一的机制解释,说明空间注意力和物体注意力如何共同作用来搜索场景并了解其中的内容。ARTSCAN模型预测物体的表面表征如何生成空间注意力的贴合形状分布,即“注意力罩”。所有表面表征动态竞争空间注意力以形成一个罩。获胜的罩在对物体的主动扫视过程中持续存在。该罩维持新兴的视角不变类别表征的持续活动,同时学习多个特定视角的类别表征,并通过关联学习将它们与视角不变的物体类别联系起来。该罩还有助于将扫视眼球运动限制在所关注物体的显著特征上。物体注意力在控制和稳定特定视角物体类别的学习中发挥作用。空间注意力在此协调物体类别学习过程中物体注意力的部署。罩的崩溃释放一个重置信号,抑制“什么”皮层处理流中活跃的视角不变类别。然后,在“哪里”皮层处理流中形成一个对应于不同物体的新罩,并且通过注意力转移和眼球运动进行搜索,继续在整个场景中学习新物体。该模型从机制上阐明了注意力转移(参与、移动、脱离)和返回抑制的基本特性。它模拟了关于基于物体的空间注意力转移的人类反应时间数据,并在一个字母大小、位置和方向各不相同的字母数据库上以98.1%的准确率和430的压缩率进行学习。该模型为统一许多关于空间和物体注意力的数据以及它们在感知、认知和行动过程中的相互作用提供了一个强大的框架。

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