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A Model of Angle Selectivity in Area V2 with Local Divisive Normalization

机译:局部划分标准化面积v2角度选择性模型

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Efficient coding hypothesis states that the goal of sensory system of the brain is to remove redundancies in the sensory input. Several models tried to remove redundancy in the visual input and successfully modeled the functional properties of neurons in the primary visual cortex. However there has been no progress to extend these models to simulate the properties of neurons in extrastriate visual areas. In this paper, we propose that visual cortex tries to remove higher order dependencies in a hierarchical architecture. In each layer a nonlinear mechanism removes redundancies in a local neighborhood. We used the biologically plausible divisive normalization mechanism in a two layer model network to remove nonlinear dependencies in the input. Units in this model can simulate the responses of neurons in area V2 to angle stimuli.
机译:有效的编码假设指出大脑的感觉系统的目标是消除感官输入中的冗余。几种模型试图删除视觉输入中的冗余,并成功建模了主要视觉皮质中神经元的功能性质。然而,延长了这些模型的进展情况无法延长诸如视觉区域中神经元的性质。在本文中,我们提出了Visual Cortex尝试在分层体系结构中删除更高阶依赖性。在每层中,非线性机制在本地邻域中消除冗余。我们在两层模型网络中使用了生物合理的分裂归一成化机制,以消除输入中的非线性依赖性。该模型中的单元可以模拟区域V2中神经元的响应到角度刺激。

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