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Emergence of Binocular Disparity Selectivity through Hebbian Learning

机译:通过Hebbian学习产生双目视差选择性

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摘要

Neural selectivity in the early visual cortex strongly reflects the statistics of our environment (; ). Although this has been described extensively in literature through various encoding hypotheses (; ; ), an explanation as to how the cortex might develop the computational architecture to support these encoding schemes remains elusive. Here, using the more realistic example of binocular vision as opposed to monocular luminance-field images, we show how a simple Hebbian coincidence-detector is capable of accounting for the emergence of binocular, disparity selective, receptive fields. We propose a model based on spike timing-dependent plasticity, which not only converges to realistic single-cell and population characteristics, but also demonstrates how known biases in natural statistics may influence population encoding and downstream correlates of behavior. Furthermore, we show that the receptive fields we obtain are closer in structure to electrophysiological data reported in macaques than those predicted by normative encoding schemes (). We also demonstrate the robustness of our model to the input dataset, noise at various processing stages, and internal parameter variation. Together, our modeling results suggest that Hebbian coincidence detection is an important computational principle and could provide a biologically plausible mechanism for the emergence of selectivity to natural statistics in the early sensory cortex.>SIGNIFICANCE STATEMENT Neural selectivity in the early visual cortex is often explained through encoding schemes that postulate that the computational aim of early sensory processing is to use the least possible resources (neurons, energy) to code the most informative features of the stimulus (information efficiency). In this article, using stereo images of natural scenes, we demonstrate how a simple Hebbian rule can lead to the emergence of a disparity-selective neural population that not only shows realistic single-cell and population tunings, but also demonstrates how known biases in natural statistics may influence population encoding and downstream correlates of behavior. Our approach allows us to view early neural selectivity, not as an optimization problem, but as an emergent property driven by biological rules of plasticity.
机译:早期视觉皮层中的神经选择性强烈反映了我们环境的统计数据(;)。尽管这在文献中已通过各种编码假设(;;)进行了广泛描述,但有关皮质如何发展计算架构以支持这些编码方案的解释仍然难以捉摸。在这里,使用双目视觉而不是单眼亮度场图像的更为现实的示例,我们展示了一个简单的Hebbian重合检测器如何能够解释双眼,视差选择性接收场的出现。我们提出了一个基于峰值时序相关可塑性的模型,该模型不仅可以收敛到现实的单细胞和种群特征,而且还可以证明自然统计中的已知偏差如何影响种群编码和行为的下游相关性。此外,我们显示,我们获得的感受野在结构上比猕猴报道的电生理数据要比规范编码方案所预测的更近。我们还演示了模型对输入数据集的鲁棒性,各个处理阶段的噪声以及内部参数变化。总之,我们的建模结果表明,Hebbian重合检测是一项重要的计算原理,并且可以为早期感觉皮层中对自然统计数据的选择性出现提供生物学上合理的机制。>意义声明视觉皮层通常通过编码方案来解释,该编码方案假定早期感觉处理的计算目标是使用尽可能少的资源(神经元,能量)来编码刺激性最大的信息特征(信息效率)。在本文中,使用自然场景的立体图像,我们演示了简单的Hebbian规则如何导致视差选择神经种群的出现,该种群不仅显示了现实的单细胞和种群调整,而且还展示了自然中的已知偏差统计信息可能会影响总体编码和行为的下游关联。我们的方法使我们可以将早期的神经选择性视为一种优化性,而不是作为一个优化问题,而是一种由生物学可塑性规则驱动的新兴属性。

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