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Network Anisotropy Trumps Noise for Efficient Object Coding in Macaque Inferior Temporal Cortex

机译:猕猴下颞皮层的有效物体编码的网络各向异性特朗普噪声

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摘要

How neuronal ensembles compute information is actively studied in early visual cortex. Much less is known about how local ensembles function in inferior temporal (IT) cortex, the last stage of the ventral visual pathway that supports visual recognition. Previous reports suggested that nearby neurons carry information mostly independently, supporting efficient processing (). However, others postulate that noise covariation effects may depend on network anisotropy/homogeneity and on how the covariation relates to representation. Do slow trial-by-trial noise covariations increase or decrease IT's object coding capability, how does encoding capability relate to correlational structure (i.e., the spatial pattern of signal and noise redundancy/homogeneity across neurons), and does knowledge of correlational structure matter for decoding? We recorded simultaneously from ∼80 spiking neurons in ∼1 mm3 of macaque IT under light neurolept anesthesia. Noise correlations were stronger for neurons with correlated tuning, and noise covariations reduced object encoding capability, including generalization across object pose and illumination. Knowledge of noise covariations did not lead to better decoding performance. However, knowledge of anisotropy/homogeneity improved encoding and decoding efficiency by reducing the number of neurons needed to reach a given performance level. Such correlated neurons were found mostly in supragranular and infragranular layers, supporting theories that link recurrent circuitry to manifold representation. These results suggest that redundancy benefits manifold learning of complex high-dimensional information and that subsets of neurons may be more immune to noise covariation than others.>SIGNIFICANCE STATEMENT How noise affects neuronal population coding is poorly understood. By sampling densely from local populations supporting visual object recognition, we show that recurrent circuitry supports useful representations and that subsets of neurons may be more immune to noise covariation than others.
机译:早期视觉皮层中积极研究神经元集成如何计算信息。关于局部合奏如何在下颞叶(IT)皮层(支持视觉识别的腹侧视觉通路的最后阶段)中发挥作用的了解还很少。先前的报告表明附近的神经元主要独立地携带信息,从而支持有效的处理()。但是,其他人则认为噪声协变效应可能取决于网络各向异性/同质性以及协变与表示的关系。缓慢的逐次试验噪声协方差会增加或降低IT的对象编码能力,编码能力如何与相关结构(即神经元之间信号和噪声冗余/同质性的空间模式)相关,并且相关结构的知识对解码?在轻度神经麻痹下,在约1 mm 3 的猕猴IT中同时记录了约80个尖峰神经元。具有相关调整的神经元的噪声相关性更强,并且噪声协变会降低对象编码能力,包括跨对象姿势和照明的泛化。噪声协方差的知识并未导致更好的解码性能。但是,各向异性/同质性的知识通过减少达到给定性能水平所需的神经元数量来提高编码和解码效率。这种相关的神经元主要存在于颗粒上层和颗粒下层,支持将循环回路与流形表示联系起来的理论。这些结果表明,冗余有益于复杂的高维信息的多方面学习,并且神经元的子集可能比其他子集更不受噪声协变的影响。>重要意义声明。人们对噪声如何影响神经元种群编码的了解很少。通过从支持视觉对象识别的本地人群中进行密集采样,我们表明循环电路支持有用的表示,并且神经元的子集可能比其他人更不受噪声协变的影响。

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