脉冲神经网络中的STDP和竞争学习及其在图像分类中的应用

Min Deng, Chuandong Li
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引用次数: 2

摘要

脉冲神经网络(SNNs)是第三代人工神经网络,可以很好地解释生物神经元的行为。近年来,对脉冲神经网络的应用研究备受关注,特别是在图像识别领域。为了解决人工神经网络缺乏生物合理性的问题,本文将Spike Timing Dependent Plasticity (STDP)与竞争学习相结合,实现了MNIST数据集分类。采用简单的两层网络结构,包括输入层和处理层。以MNIST数据集为输入,基于频率编码生成尖峰序列。处理层采用竞争学习机制对网络进行训练,在学习训练过程中,采用STDP幂律学习规则更新权值,实现无监督学习图像分类,分类准确率达到83.179%。结果表明,本文提出的网络具有较好的性能、较快的训练速度和较高的生物合理性。
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STDP and Competition Learning in Spiking Neural Networks and its application to Image Classification
Spiking neural networks (SNNs), regarded as the third generation artificial neural networks (ANNs), can well explain the behavior of biological neurons. Recently, the research on the application of spiking neural networks has attracted much attention, especially in the image recognition field. To solve the problem of ANNs' lack of biological rationality, this paper combines Spike Timing Dependent Plasticity (STDP) with competitive learning to realize the MNIST dataset classification. A simple two-layer network structure, which includes an input layer and a processing layer is adopted. With the MNIST dataset as input, spike trains are generated based on frequency coding. A competitive learning mechanism is adopted in the processing layer to train the network, while during the learning and training process, we adopted the STDP power-law learning rule to update weights to achieve unsupervised learning image classification, and the classification accuracy reaches 83.179%. The results show that the network proposed in this paper achieves good performance, fast training speed and more biological rationality.
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