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首页> 外文期刊>Journal of Neural Transplantation and Plasticity: Neural Plasticity >Pattern Recognition of Spiking Neural Networks Based on Visual Mechanism and Supervised Synaptic Learning
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Pattern Recognition of Spiking Neural Networks Based on Visual Mechanism and Supervised Synaptic Learning

机译:基于视觉机制和监督突触学习的尖峰神经网络的模式识别

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Electrophysiological studies have shown that mammalian primary visual cortex are selective for the orientations of visual stimuli. Inspired by this mechanism, we propose a hierarchical spiking neural network (SNN) for image classification. Grayscale input images are fed through a feed-forward network consisting of orientation-selective neurons, which then projected to a layer of downstream classifier neurons through the spiking-based supervised tempotron learning rule. Based on the orientation-selective mechanism of the visual cortex and tempotron learning rule, the network can effectively classify images of the extensively studied MNIST database of handwritten digits, which achieves 96% classification accuracy based on only 2000 training samples (traditional training set is 60000). Compared with other classification methods, our model not only guarantees the biological plausibility and the accuracy of image classification but also significantly reduces the needed training samples. Considering the fact that the most commonly used deep learning neural networks need big data samples and high power consumption in image recognition, this brain-inspired computational neural network model based on the layer-by-layer hierarchical image processing mechanism of the visual cortex may provide a basis for the wide application of spiking neural networks in the field of intelligent computing.
机译:电生理学研究表明,哺乳动物原发性视觉皮质是视觉刺激方向的选择性。受到这种机制的启发,我们提出了一种分层尖峰神经网络(SNN),用于图像分类。灰度输入图像通过由方向选择性神经元组成的前馈网络馈送,然后通过基于尖刺的监督的温度学习规则投射到一层下游分类器神经元。基于Visual Cortex和Tempotron学习规则的定向选择机制,网络可以有效地对手写数字的广泛研究Mnist数据库的图像进行分类,这基于仅基于2000个训练样本(传统训练集是60000 )。与其他分类方法相比,我们的模型不仅保证了图像分类的生物合理性和准确性,而且还显着减少了所需的训练样本。考虑到最常用的深度学习神经网络需要大数据样本和图像识别中的高功耗,这种基于视觉皮质层的逐层分层图像处理机制的这种脑启发的计算神经网络模型可以提供尖峰神经网络在智能计算领域广泛应用的基础。

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