Local Correlated Noise Improvement of Signal-to-Noise Ratio Gain in an Ensemble of Noisy Neuron

Tianquan Feng, Qingrong Chen, M. Yi
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Abstract

We theoretically investigate the collective response of an ensemble of leaky integrate-and-fire neuron units to a noisy periodic signal by including local spatially correlated noise. By using the linear response theory, we obtained the analytic expression of signal-to-noise ratio (SNR). Numerical simulation results show that the rms amplitude of internal noise can be increased up to an optimal value where the output SNR reaches a maximum value. Due to the existence of the local spatially correlated noise in the units of the ensemble, the SNR gain of the collective ensemble response can exceed unity and can be optimized when the nearest-neighborhood correlation is negative. This nonlinear collective phenomenon of SNR gain amplification in an ensemble of leaky integrate-and-fire neuron units can be related to the array stochastic resonance (SR) phenomenon. Furthermore, we also show that the SNR gain can also be optimized by tuning the number of neuron units, frequency and amplitude of the weak periodic signal. The present study illustrates the potential to utilize the local spatially correlation noise and the number of ensemble units for optimizing the collective response of the neuron to inputs, as well as a guidance in the design of information processing devices to weak signal detection.
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噪声神经元集成中信噪比增益的局部相关噪声改进
我们从理论上研究了包含局部空间相关噪声的泄漏积分与放电神经元单元集合对噪声周期信号的集体响应。利用线性响应理论,得到了信号信噪比的解析表达式。数值模拟结果表明,当输出信噪比达到最大值时,可以将内部噪声的均方根幅值提高到最优值。由于集合单元中局部空间相关噪声的存在,使得集合响应的信噪比增益可以超过1,当最近邻相关为负时可以进行优化。在一个有泄漏的神经元单元集合中,信噪比增益放大的非线性集体现象可能与阵列随机共振(SR)现象有关。此外,我们还表明,信噪比增益也可以通过调整神经元单元的数量、弱周期信号的频率和幅度来优化。本研究说明了利用局部空间相关噪声和集成单元的数量来优化神经元对输入的集体响应的潜力,以及设计用于弱信号检测的信息处理设备的指导。
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