Domijan Drazen, Setić Mia
University of Rijeka, Croatia.
J Vis. 2008 May 30;8(7):10.1-27. doi: 10.1167/8.7.10.
A computational model is proposed in order to explain how bottom-up and top-down signals are combined into a unified perception of figure and background. The model is based on the interaction between the ventral and the dorsal stream. The dorsal stream computes saliency based on boundary signals provided by the simple and the complex cortical cells. Output from the dorsal stream is projected to the surface network which serves as a blackboard on which the surface representation is formed. The surface network is a recurrent network which segregates different surfaces by assigning different firing rates to them. The figure is labeled by the maximal firing rate. Computer simulations showed that the model correctly assigns figural status to the surface with a smaller size, a greater contrast, convexity, surroundedness, horizontal-vertical orientation and a higher spatial frequency content. The simple gradient of activity in the dorsal stream enables the simulation of the new principles of the lower region and the top-bottom polarity. The model also explains how the exogenous attention and the endogenous attention may reverse the figural assignment. Due to the local excitation in the surface network, neural activity at the cued region will spread over the whole surface representation. Therefore, the model implements the object-based attentional selection.
为了解释自下而上和自上而下的信号如何结合形成对图形和背景的统一感知,提出了一种计算模型。该模型基于腹侧流和背侧流之间的相互作用。背侧流根据简单和复杂皮层细胞提供的边界信号计算显著性。背侧流的输出投射到表面网络,该网络充当形成表面表征的黑板。表面网络是一个循环网络,通过为不同表面分配不同的放电率来分离它们。图形由最大放电率标记。计算机模拟表明,该模型能正确地将图形状态赋予尺寸较小、对比度较大、具有凸性、被包围性、水平垂直方向以及较高空间频率内容的表面。背侧流中活动的简单梯度能够模拟下部区域的新原理和上下极性。该模型还解释了外源性注意力和内源性注意力如何可能逆转图形分配。由于表面网络中的局部兴奋,被提示区域的神经活动将扩散到整个表面表征。因此,该模型实现了基于对象的注意力选择。