基于前馈神经网络和Izhikevich神经模型的数字和特殊字符手写模式识别研究进展

S. Chaturvedi, Rutika N. Titre, Neha R. Sondhiya
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引用次数: 20

摘要

神经网络是一种有效的模式识别工具。本文将前馈神经网络和Izhikevich神经元模型应用于数字和特殊字符的模式识别。给定一组数字和特殊字符的输入模式,每个输入模式被转换成一个输入信号。然后对前馈神经网络和Izhikevich神经元模型进行刺激,计算放电速率。在调整突触权重和神经模型的阈值后,输入模式将产生几乎相同的放电率,并将识别模式。最后,在MATLAB中实现了前馈神经网络(Artificial neural network)模型和Izhikevich神经网络(Spiking neural network)模型在手写体模式识别中的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of Handwritten Pattern Recognition of Digits and Special Characters Using Feed Forward Neural Network and Izhikevich Neural Model
Neural Networks are found as an effective tool for pattern recognition. In this paper a Feed Forward Neural Network and an Izhikevich neuron model is applied for pattern recognition of Digits and Special characters. Given a set of input patterns of digits and Special characters each input pattern is transformed into an input signal. Then the Feed Forward Neural Network and Izhikevich neuron model is stimulated and firing rates are computed. After adjusting the synaptic weights and the threshold values of the neural model, input patterns will generate almost the same firing rate and will recognize the patterns. At last, a comparison between a feed-forward neural network which is Artificial Neural Network model and the Izhikevich neural model which is Spiking Neural Network model is implemented in MATLAB for the handwritten Pattern recognition.
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