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Visual Nonclassical Receptive Field Effects Emerge from Sparse Coding in a Dynamical System

机译:动态系统中稀疏编码产生视觉非经典感受场效应

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摘要

Extensive electrophysiology studies have shown that many V1 simple cells have nonlinear response properties to stimuli within their classical receptive field (CRF) and receive contextual influence from stimuli outside the CRF modulating the cell's response. Models seeking to explain these non-classical receptive field (nCRF) effects in terms of circuit mechanisms, input-output descriptions, or individual visual tasks provide limited insight into the functional significance of these response properties, because they do not connect the full range of nCRF effects to optimal sensory coding strategies. The (population) sparse coding hypothesis conjectures an optimal sensory coding approach where a neural population uses as few active units as possible to represent a stimulus. We demonstrate that a wide variety of nCRF effects are emergent properties of a single sparse coding model implemented in a neurally plausible network structure (requiring no parameter tuning to produce different effects). Specifically, we replicate a wide variety of nCRF electrophysiology experiments (e.g., end-stopping, surround suppression, contrast invariance of orientation tuning, cross-orientation suppression, etc.) on a dynamical system implementing sparse coding, showing that this model produces individual units that reproduce the canonical nCRF effects. Furthermore, when the population diversity of an nCRF effect has also been reported in the literature, we show that this model produces many of the same population characteristics. These results show that the sparse coding hypothesis, when coupled with a biophysically plausible implementation, can provide a unified high-level functional interpretation to many response properties that have generally been viewed through distinct mechanistic or phenomenological models.
机译:广泛的电生理研究表明,许多V1单细胞在其经典感受野(CRF)内具有对刺激的非线性响应特性,并从CRF以外的刺激中受到上下文的影响,从而调节细胞的响应。试图通过电路机制,输入输出描述或单个视觉任务来解释这些非经典感受野(nCRF)效应的模型,对于这些响应特性的功能意义缺乏足够的了解,因为它们没有连接所有的响应特性。 nCRF影响最佳的感觉编码策略。 (人口)稀疏编码假设推测出一种最佳的感觉编码方法,其中神经种群使用尽可能少的活动单位来表示刺激。我们证明,各种各样的nCRF效果是在神经上合理的网络结构中实现的单个稀疏编码模型的新兴属性(不需要进行任何参数调整即可产生不同的效果)。具体来说,我们在执行稀疏编码的动态系统上复制了各种各样的nCRF电生理实验(例如,终点停止,环绕抑制,方向调整的对比度不变性,交叉方向抑制等),表明该模型产生单个单元再现规范的nCRF效果。此外,当在文献中也报道了nCRF效应的种群多样性时,我们表明该模型产生了许多相同的种群特征。这些结果表明,当稀疏编码假设与生物物理上可行的实现方式结合使用时,可以为通常通过不同的机制或现象学模型观察到的许多响应特性提供统一的高级功能解释。

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