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Classifying auditory nerve patterns with neural nets: a modeling study with low level signals

机译:用神经网络对听觉神经模式进行分类:具有低水平信号的建模研究

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摘要

In man, 30, 000 fibers of the primary auditory nerve connect the receptor cells of the inner ear with the central auditory nervous system. The acoustic information in the auditory nerve is binary coded: in every fiber up to 400 impulses (spikes) per second are propagated. However, the pattern is disturbed by the spontaneous activity of the nervous system, i.e. without any acoustic signal the high sensitive fibers transfer up to 160 spikes/s. This spontaneous activity seems to be of high importance for detecting low level acoustic signals. The purpose of this study is to use artificial neural network techniques in order to detect any low level auditory information that is hidden in a simulated spiking pattern of the auditory nerve. Sinusoidal stimuli with a signal to noise ratio as low a 1/10 can be recognized from the simulated firing pattern of a single auditory nerve fiber.
机译:在人类中,主听神经的30,000根纤维将内耳的受体细胞与中枢听觉神经系统连接起来。听神经中的声音信息是二进制编码的:在每根光纤中,每秒最多传播400次脉冲(峰值)。然而,该模式被神经系统的自发活动所干扰,即在没有任何声音信号的情况下,高灵敏纤维的传输速度高达160峰值/秒。这种自发活动似乎对于检测低电平声信号非常重要。这项研究的目的是使用人工神经网络技术来检测隐藏在模拟听觉尖峰模式中的任何低水平听觉信息。从单个听神经纤维的模拟发射模式可以识别出信噪比低至1/10的正弦刺激。

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