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Hierarchical representation of shapes in visual cortex—from localized features to figural shape segregation

机译:视觉皮层中形状的分层表示-从局部特征到图形形状分离

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摘要

Visual structures in the environment are segmented into image regions and those combined to a representation of surfaces and prototypical objects. Such a perceptual organization is performed by complex neural mechanisms in the visual cortex of primates. Multiple mutually connected areas in the ventral cortical pathway receive visual input and extract local form features that are subsequently grouped into increasingly complex, more meaningful image elements. Such a distributed network of processing must be capable to make accessible highly articulated changes in shape boundary as well as very subtle curvature changes that contribute to the perception of an object. We propose a recurrent computational network architecture that utilizes hierarchical distributed representations of shape features to encode surface and object boundary over different scales of resolution. Our model makes use of neural mechanisms that model the processing capabilities of early and intermediate stages in visual cortex, namely areas V1–V4 and IT. We suggest that multiple specialized component representations interact by feedforward hierarchical processing that is combined with feedback signals driven by representations generated at higher stages. Based on this, global configurational as well as local information is made available to distinguish changes in the object's contour. Once the outline of a shape has been established, contextual contour configurations are used to assign border ownership directions and thus achieve segregation of figure and ground. The model, thus, proposes how separate mechanisms contribute to distributed hierarchical cortical shape representation and combine with processes of figure-ground segregation. Our model is probed with a selection of stimuli to illustrate processing results at different processing stages. We especially highlight how modulatory feedback connections contribute to the processing of visual input at various stages in the processing hierarchy.
机译:环境中的视觉结构被划分为图像区域,而这些则被组合为表面和原型对象的表示。通过灵长类动物视觉皮层中的复杂神经机制来执行这种感知组织。腹侧皮质通路中的多个相互连接的区域接收视觉输入并提取局部形式特征,这些特征随后被分组为越来越复杂,更有意义的图像元素。这样的分布式处理网络必须能够使形状边界的高度关节化的变化以及有助于物体感知的非常细微的曲率变化成为可访问的。我们提出了一种递归计算网络体系结构,该体系结构利用形状特征的分层分布式表示来对不同分辨率范围内的表面和对象边界进行编码。我们的模型利用神经机制对视觉皮层的早期和中间阶段(即V1-V4区域和IT)的处理能力进行建模。我们建议,多个专门的组件表示形式通过前馈分层处理进行交互,前馈分层处理与更高级别生成的表示驱动的反馈信号相结合。基于此,可以使用全局配置信息和局部信息来区分对象轮廓的变化。一旦确定了形状的轮廓,就可以使用上下文轮廓配置来分配边界所有权方向,从而实现图形和地面的隔离。因此,该模型提出了不同的机制如何有助于分布式的分层皮质形状表示,以及如何与图形-地面隔离过程结合。我们的模型通过选择刺激来说明不同加工阶段的加工结果。我们特别强调调制反馈连接如何在处理层次结构的各个阶段促进视觉输入的处理。

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