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NEURONAL DIVERSITY IN SPIKING NEURAL NETWORKS AND PATTERN CLASSIFICATION

机译:尖峰神经网络中的神经多样性和模式分类

摘要

A method for pattern recognition in a spiking neural network robust to initial network conditions includes creating a set of diverse neurons in a first layer to increase a diversity in a set of spike timings. An input corresponding to a pattern plus noise is presented at an input layer and represented as spikes. The spikes are received at the first layer and spikes are produced at the first layer based on the received spikes. The method also includes updating a weight of each synapse between an input layer neuron and an output layer neuron based on a spike timing difference between a spike at the input layer neuron and a spike at the output layer neuron. Further, the method includes classifying a spike pattern represented by a set of inter-spike intervals, regardless of noise in the spike pattern.
机译:用于对初始网络条件具有鲁棒性的尖峰神经网络中的模式识别的方法包括在第一层中创建一组多样化的神经元,以增加一组峰值定时的多样性。对应于模式加噪声的输入出现在输入层,并表示为尖峰。在第一层接收尖峰,并且基于所接收的尖峰在第一层产生尖峰。该方法还包括基于输入层神经元处的尖峰和输出层神经元处的尖峰之间的尖峰定时差来更新输入层神经元和输出层神经元之间的每个突触的权重。此外,该方法包括对由一组尖峰间间隔表示的尖峰模式进行分类,而不管尖峰模式中的噪声如何。

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