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A Geometric Model of Multi-scale Orientation Preference Maps via Gabor Functions

机译:通过Gabor函数的多尺度方向偏好映射的几何模型

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In this paper we present a new model for the generation of orientation preference maps in the primary visual cortex (V1), considering both orientation and scale features. First we undertake to model the functional architecture of V1 by interpreting it as a principal fiber bundle over the 2-dimensional retinal plane by introducing intrinsic variables orientation and scale. The intrinsic variables constitute a fiber on each point of the retinal plane and the set of receptive profiles of simple cells is located on the fiber. Each receptive profile on the fiber is mathematically interpreted as a rotated Gabor function derived from an uncertainty principle. The visual stimulus is lifted in a 4-dimensional space, characterized by coordinate variables, position, orientation and scale, through a linear filtering of the stimulus with Gabor functions. Orientation preference maps are then obtained by mapping the orientation value found from the lifting of a noise stimulus onto the 2-dimensional retinal plane. This corresponds to a Bargmann transform in the reducible representation of the $$ext {SE}(2)=mathbb {R}^2imes S^1$$ SE ( 2 ) = R 2 × S 1 group. A comparison will be provided with a previous model based on the Bargmann transform in the irreducible representation of the $$ext {SE}(2)$$ SE ( 2 ) group, outlining that the new model is more physiologically motivated. Then, we present simulation results related to the construction of the orientation preference map by using Gabor filters with different scales and compare those results to the relevant neurophysiological findings in the literature.
机译:在本文中,考虑到既有方向和比例特征,我们介绍了一个用于生成主导偏好映射的新模型。首先,我们通过引入内在变量取向和比例来将其作为二维视网膜平面上的主要光纤束来建立V1的功能架构。内在变量构成视网膜平面的每个点上的光纤,并且简单细胞的一组接受轮廓位于纤维上。光纤上的每个接受轮廓是数学上被解释为源自不确定性原理的旋转Gabor函数。视觉刺激在4维空间中提升,其特征在于通过用Gabor功能的刺激的线性滤波来表征坐标变量,位置,方向和比例。然后通过将噪声刺激的提升到二维视网膜平面上的取向值映射来获得取向偏好图。这对应于$$ text {se}(2)= mathbb {r} ^ 2 times s ^ 1 $$ SE(2)= R 2×S 1组的REDIBLE表示中的argmann转换。将在$$ 案文{se}(2)$$ {$$ SE(2)组的IRRAYIBLE表示中,基于BARGMANN变换的BARGMANN转换提供比较,概述新模型更具生理动机。然后,我们通过使用不同尺度的Gabor滤波器来呈现与定向偏好映射的构造相关的仿真结果,并将结果与​​文献中相关的神经生理学结果进行比较。

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