具有突触可塑性识别的脉冲神经网络

Jing Li, I. Liu, Weixin Gao, Xiaoyan Huang
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引用次数: 1

摘要

脉冲神经网络是第三代神经网络,它模拟了大脑中神经元和网络的机制。它具有像神经系统一样的分布式计算机制和健壮的信息处理方式。本文描述了一种具有突触可塑性的脉冲神经网络对输入场景的识别。数字脉冲硅神经元(dsn)是一种基于数学结构的定性模型,用于再现神经元的各种行为。我们还在我们的尖峰神经网络中设计了突触模型来精确描述递质释放和突触后电流产生的动态。我们的网络有三层。第1层和第2层具有特殊感受野的尖峰神经元分别进行边缘检测和方向选择。突触的可塑性是在第2层的尖峰神经元与输出层的突触连接中实现的。连接的变化基于Hebbian学习规则,该规则假设两个尖峰的时差会改变连接的值。我们用图像识别任务来评估我们的脉冲神经网络。输出层的尖峰神经元以高频率响应其相关的输入场景。仿真结果表明,我们的脉冲神经网络能够成功识别之前学习过的输入场景。该识别对各种失真具有很强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spiking neural network with synaptic plasticity for recognition
The spiking neural network referred to the third generation of neural network simulates the mechanisms of neurons and networks in brain. It has the distributed computational mechanism and robust information processing way like the nervous system. This paper describes that a spiking neural network with the synaptic plasticity recognizes the input scenes. The Digital spiking silicon neuron (DSSN), a mathematical structure-based qualitative model, is used to reproduce the various behaviors of neurons. We also designed the synapse model in our spiking neural network to precisely describe the dynamics of the transmitter release and the postsynaptic current generation. There are three layers in our network. The spiking neurons in layer 1 and 2 with special receptive fields perform the edge detection and orientation selection, respectively. The synaptic plasticity is realized in synaptic connections between spiking neurons in layer 2 and the output layer. The changing of connection is based on the Hebbian learning rule which supposes that the time difference of two spikes modifies the value of connection. We evaluated our spiking neural network with the task of image recognition. The spiking neurons in the output layer fire with the high frequency in response to their relevant input scenes. The simulation results show that our spiking neural network can successfully recognize the input scenes learned before. The recognition is robust against various distortions.
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