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Reconstructing Natural Visual Scenes From Spike Times

机译:从穗时间重建自然视觉场景

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In this paper, we investigate neural circuit architectures encoding natural visual scenes with neuron models consisting of dendritic stimulus processors (DSPs) in cascade with biophysical spike generators (BSGs). DSPs serve as functional models of processing of stimuli up to and including the neuron's active dendritic tree. BSGs model spike generation at the axon hillock level where neurons respond to aggregated synaptic currents. The highly nonlinear behavior of BSGs calls for novel methods of input/output (I/O) analysis of neural encoding circuits and novel decoding algorithms for signal recovery. On the encoding side we characterize the BSG I/O with a phase response curve (PRC) manifold and interpret neural encoding as generalized sampling. We provide a decoding algorithm that recovers visual stimuli encoded by a neural circuit with intrinsic noise sources. In the absence of noise, we give conditions on perfect reconstruction of natural visual scenes. We extend the architecture to encompass neuron models with on–off BSGs with self- and cross-feedback. With the help of the PRC manifold, decoding is shown to be tractable even for a wide signal dynamic range. Consequently, bias currents that were essential in the encoding process can largely be reduced or eliminated. Finally, we present examples of massively parallel encoding and decoding of natural visual scenes on a cluster of graphical processing units (GPUs). We evaluate the signal reconstruction under different noise conditions and investigate the performance of signal recovery in the Nyquist region and for different temporal bandwidths.
机译:在本文中,我们研究了由神经网络模型编码自然视觉场景的神经电路架构,该模型由树突刺激处理器(DSP)与生物物理峰值发生器(BSG)级联组成。 DSP充当处理直至(包括)神经元活动树突树的刺激的功能模型。 BSGs在神经元对聚集的突触电流作出反应的轴突岗水平上模拟尖峰的产生。 BSG的高度非线性行为要求神经编码电路的输入/输出(I / O)分析的新颖方法以及用于信号恢复的新颖解码算法。在编码方面,我们用相位响应曲线(PRC)歧管表征BSG I / O,并将神经编码解释为广义采样。我们提供了一种解码算法,可恢复具有固有噪声源的神经电路编码的视觉刺激。在没有噪音的情况下,我们为自然视觉场景的完美重建提供了条件。我们将体系结构扩展为包含具有自反馈和交叉反馈的 on-off BSG的神经元模型。在PRC流形的帮助下,即使在很宽的信号动态范围内,解码也很容易处理。因此,可以大大减少或消除编码过程中必不可少的偏置电流。最后,我们提供了在图形处理单元(GPU)集群上对自然视觉场景进行大规模并行编码和解码的示例。我们评估了不同噪声条件下的信号重建,并研究了奈奎斯特区域和不同时间带宽下信号恢复的性能。

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