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Linear Neural Circuitry Model for Visual Receptive Fields

机译:视觉感受野的线性神经电路模型

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The current state of art in the literature indicates that linear visual receptive fields are Gaussian or formed based on Gaussian kernels in biological visual systems. In this paper, by employing hypotheses based on the anatomy and physiology of vertebrate biological vision, we propose a neural circuitry possessing Gaussian-related visual receptive fields. Here, we present a plausible circuitry system matching the characteristic properties of an ideal visual front end of biological visual systems and then present a condition under which this circuit demonstrates a linear behaviour to model the linear receptive fields observed in the biological experimental data. The objective of this study is to understand the hardware circuitry from which various visual receptive fields in biological visual system can be deduced. In our model, a nonlinear neural network communicating with spikes is considered. The condition under which this neural network behaves linearly is discussed. The equivalent linear circuit proposed here employs some anatomical and physiological properties of the early biological visual pathway to derive the visual receptive field profiles for linear cells such as neurons with isotropic separable, non-isotropic separable and non-separable (velocity-adapted) Gaussian receptive fields in the LGN and striate cortex. In the model presented here, the theory of transmission lines for linear distributed electrical circuits is employed for two-dimensional transmission grids to model cell connectivities in a neural layer. The model presented here leads to a formulation similar to the Gaussian scale-space theory for the transmission of visual signals through various layers of neurons. Our model therefore presents a new insight on how the convolution process with Gaussian kernels can be implemented in vertebrate visual systems. The comparison of the numerical simulations of our model presented in this paper with the data analysis of receptive field profiles recorded in the biological literature demonstrates a complete agreement between our theoretical model and experimental data. Our model is also in good agreement with the numerical results of the Gaussian scale-space theory for the visual receptive fields.
机译:文献中的当前技术水平表明,线性视觉感受野是高斯的或基于生物视觉系统中的高斯核形成的。在本文中,通过采用基于脊椎动物生物学视觉的解剖学和生理学的假设,我们提出了一种具有高斯相关视觉感受器的神经回路。在这里,我们提出了一个与生物视觉系统的理想视觉前端的特征相匹配的合理的电路系统,然后提出了一种条件,在该条件下,该电路表现出了线性行为,以对生物学实验数据中观察到的线性感受野进行建模。这项研究的目的是了解硬件电路,从中可以推断出生物视觉系统中的各种视觉感受域。在我们的模型中,考虑了与尖峰通信的非线性神经网络。讨论了该神经网络线性行为的条件。本文提出的等效线性电路利用早期生物视觉通路的一些解剖学和生理特性来导出线性细胞(例如具有各向同性可分离,非各向同性可分离和不可分离(速度适应)的高斯受体的神经元)的视感受野LGN和纹状皮质中的磁场。在此处介绍的模型中,线性分布电路的传输线理论被用于二维传输网格,以对神经层中的细胞连接性进行建模。此处介绍的模型导致了类似于高斯尺度空间理论的公式,用于通过神经元的各个层传输视觉信号。因此,我们的模型提供了关于如何在脊椎动物视觉系统中实现高斯核卷积过程的新见解。本文介绍的我们模型的数值模拟与生物学文献中记录的接受野剖面数据的比较表明,我们的理论模型与实验数据完全吻合。我们的模型也与高斯尺度空间理论在视觉感受野上的数值结果非常吻合。

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