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首页> 外文期刊>Neural computation >Coding of Time-Varying Signals in Spike Trains of Integrate-and-Fire Neurons with Random Threshold
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Coding of Time-Varying Signals in Spike Trains of Integrate-and-Fire Neurons with Random Threshold

机译:具有随机阈值的集成和发射神经元的峰值训练中时变信号的编码

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摘要

Recently, methods of statistical estimation theory have been applied by Bialek and collaborators (1991) to reconstruct time-varying velocity signals and to investigate the processing of visual information by a directionally selective motion detector in the fly's visual system, the H1 cell. We summarize here our theoretical results obtained by studying these reconstructions starting from a simple model of H1 based on experimental data. Under additional technical assumptions, we derive a closed expression for the Fourier transform of the optimal reconstruction filter in terms of the statistics of the stimulus and the characteristics of the model neuron, such as its firing rate. It is shown that linear reconstruction filters will change in a nontrivial way if the statistics of the signal or the mean firing rate of the cell changes. Analytical expressions are then derived for the mean square error in the reconstructions and the lower bound on the rate of information transmission that was estimated experimentally by Bialek et al. (1991). For plausible values of the parameters, the model is in qualitative agreement with experimental data. We show that the rate of information transmission and mean square error represent different measures of the reconstructions: in particular, satisfactory reconstructions in terms of the mean square error can be achieved only using stimuli that are matched to the properties of the recorded cell. Finally, it is shown that at least for the class of models presented here, reconstruction methods can be understood as a generalization of the more familiar reverse-correlation technique.
机译:最近,Bialek和合作者(1991)应用了统计估计理论的方法来重建时变速度信号,并通过定向选择性运动探测器在飞行器视觉系统H1单元中研究视觉信息的处理。我们在这里总结通过研究基于基于实验数据的H1的简单模型的这些重构而获得的理论结果。在其他技术假设下,我们根据刺激的统计数据和模型神经元的特征(例如激发速率)得出最佳重构滤波器傅里叶变换的封闭表达式。结果表明,如果信号的统计量或单元的平均发射率发生变化,则线性重构滤波器将以不平凡的方式发生变化。然后,得出有关重构中均方误差和信息传输速率下限的解析表达式,这些表达式是由Bialek等人通过实验估算的。 (1991)。对于参数的合理值,该模型与实验数据在质量上一致。我们表明,信息传输的速率和均方误差代表了重建的不同度量:特别是,仅在使用与记录单元格属性匹配的刺激后,才能实现均方误差方面令人满意的重建。最后,表明至少对于此处介绍的模型类别,重构方法可以理解为对更熟悉的逆相关技术的概括。

著录项

  • 来源
    《Neural computation》 |1996年第1期|44-66|共23页
  • 作者

    Gabbiani F; Koch C;

  • 作者单位

    Division of Biology, 139-74 Caltech, Pasadena, CA 91125 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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