首页> 外文OA文献 >Replicating receptive fields of simple and complex cells in primary visual cortex in a neuronal network model with temporal and population sparseness and reliability.
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Replicating receptive fields of simple and complex cells in primary visual cortex in a neuronal network model with temporal and population sparseness and reliability.

机译:在具有时间和种群稀疏性和可靠性的神经网络模型中,复制初级视觉皮层中简单和复杂细胞的感受野。

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摘要

We propose a new principle for replicating receptive field properties of neurons in the primary visual cortex. We derive a learning rule for a feedforward network, which maintains a low firing rate for the output neurons (resulting in temporal sparseness) and allows only a small subset of the neurons in the network to fire at any given time (resulting in population sparseness). Our learning rule also sets the firing rates of the output neurons at each time step to near-maximum or near-minimum levels, resulting in neuronal reliability. The learning rule is simple enough to be written in spatially and temporally local forms. After the learning stage is performed using input image patches of natural scenes, output neurons in the model network are found to exhibit simple-cell-like receptive field properties. When the output of these simple-cell-like neurons are input to another model layer using the same learning rule, the second-layer output neurons after learning become less sensitive to the phase of gratings than the simple-cell-like input neurons. In particular, some of the second-layer output neurons become completely phase invariant, owing to the convergence of the connections from first-layer neurons with similar orientation selectivity to second-layer neurons in the model network. We examine the parameter dependencies of the receptive field properties of the model neurons after learning and discuss their biological implications. We also show that the localized learning rule is consistent with experimental results concerning neuronal plasticity and can replicate the receptive fields of simple and complex cells.
机译:我们提出了一种新的原理,用于复制初级视觉皮层中神经元的感受野特性。我们导出前馈网络的学习规则,该规则维持输出神经元的低激发速率(导致时间稀疏),并且在任何给定时间仅允许网络中一小部分神经元激发(导致种群稀疏) 。我们的学习规则还将每个时间步长输出神经元的放电率设置为接近最大或接近最小水平,从而提高神经元的可靠性。学习规则非常简单,可以以空间和时间局部形式编写。在使用自然场景的输入图像补丁执行学习阶段之后,发现模型网络中的输出神经元表现出简单细胞样的接受场特性。当使用相同的学习规则将这些简单细胞样神经元的输出输入到另一个模型层时,学习后的第二层输出神经元对光栅相位的敏感度要比简单细胞样输入神经元低。特别是,由于模型网络中来自第二层神经元的方向选择性相似的第一层神经元的连接收敛,某些第二层输出神经元变得完全相位不变。我们学习后检查模型神经元的感受野属性的参数依赖性,并讨论其生物学意义。我们还表明,本地化的学习规则与关于神经元可塑性的实验结果是一致的,并且可以复制简单和复杂细胞的感受野。

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