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Relating functional connectivity in V1 neural circuits and 3D natural scenes using Boltzmann machines

机译:使用Boltzmann机器关联V1神经回路和3D自然场景中的功能连接

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摘要

Bayesian theory has provided a compelling conceptualization for perceptual inference in the brain. Central to Bayesian inference is the notion of statistical priors. To understand the neural mechanisms of Bayesian inference, we need to understand the neural representation of statistical regularities in the natural environment. In this paper, we investigated empirically how statistical regularities in natural 3D scenes are represented in the functional connectivity of disparity-tuned neurons in the primary visual cortex of primates. We applied a Boltzmann machine model to learn from 3D natural scenes, and found that the units in the model exhibited cooperative and competitive interactions, forming a “disparity association field”, analogous to the contour association field. The cooperative and competitive interactions in the disparity association field are consistent with constraints of computational models for stereo matching. In addition, we simulated neurophysiological experiments on the model, and found the results to be consistent with neurophysiological data in terms of the functional connectivity measurements between disparity-tuned neurons in the macaque primary visual cortex. These findings demonstrate that there is a relationship between the functional connectivity observed in the visual cortex and the statistics of natural scenes. They also suggest that the Boltzmann machine can be a viable model for conceptualizing computations in the visual cortex and, as such, can be used to predict neural circuits in the visual cortex from natural scene statistics.
机译:贝叶斯理论为大脑中的知觉推断提供了令人信服的概念化。贝叶斯推理的核心是统计先验的概念。要了解贝叶斯推理的神经机制,我们需要了解自然环境中统计规律的神经表示。在本文中,我们根据经验研究了自然3D场景中的统计规律如何在灵长类动物初级视皮层中视差调谐神经元的功能连通性中表示。我们应用了Boltzmann机器模型从3D自然场景中学习,发现模型中的单元表现出合作和竞争的相互作用,形成了一个“视差关联字段”,类似于轮廓关联字段。视差关联领域中的合作和竞争互动与立体匹配计算模型的约束一致。此外,我们在模型上模拟了神经生理学实验,发现在猕猴初级视皮层视差调整神经元之间的功能连通性测量方面,结果与神经生理学数据一致。这些发现表明,在视觉皮层中观察到的功能连通性与自然场景的统计数据之间存在关联。他们还建议,玻尔兹曼机器可以成为可行的模型,用于概念化视觉皮层中的计算,因此,可以用于根据自然场景统计数据预测视觉皮层中的神经回路。

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