基本哺乳动物视网膜对原型复杂细胞CNN通用机的影响

D. Bálya, C. Rekeczky, T. Roska
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引用次数: 2

摘要

哺乳动物视网膜的一些平行通道图示。不同的分解可能性由青色块表示。视网膜中的不同神经元类型被组织成用CNN层建模的二维stta,由球体表示。给定层中的神经元通过突触影响另一层中的另一个神经元,箭头表示连接。各层具有不同的时间和空间常数,突触产生非线性传递函数。
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Basic mammalian retinal effects on the prototype complex cell CNN universal machine
Some parallel channels of the mammalian retina are illustrated schematically. The different decomposition possibilities are indicated by the cyan blocks. The different neuron types in the retina are organized into two-dimensional stmta modeled with CNN layers, which are represented by the spheres. A neuron in a given layer effects another neuron in another layer through synapses while the arrows represent the connections. The layers have different time and space constants and the synapses produce non-linear transfer functions.
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