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首页> 外文期刊>IEEE Transactions on Cognitive and Developmental Systems >Deep Spiking Convolutional Neural Network Trained With Unsupervised Spike-Timing-Dependent Plasticity
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Deep Spiking Convolutional Neural Network Trained With Unsupervised Spike-Timing-Dependent Plasticity

机译:深度尖峰卷积神经网络训练,具有无监督的峰值定时依赖性可塑性

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摘要

Spiking neural networks (SNNs) have emerged as a promising brain inspired neuromorphic-computing paradigm for cognitive system design due to their inherent event-driven processing capability. The fully connected (FC) shallow SNNs typically used for pattern recognition require large number of trainable parameters to achieve competitive classification accuracy. In this paper, we propose a deep spiking convolutional neural network (SpiCNN) composed of a hierarchy of stacked convolutional layers followed by a spatial-pooling layer and a final FC layer. The network is populated with biologically plausible leaky-integrate-and-fire (LIF) neurons interconnected by shared synaptic weight kernels. We train convolutional kernels layer-by-layer in an unsupervised manner using spike-timing-dependent plasticity (STDP) that enables them to self-learn characteristic features making up the input patterns. In order to further improve the feature learning efficiency, we propose using smaller 3x3 kernels trained using STDP-based synaptic weight updates performed over a mini-batch of input patterns. Our deep SpiCNN, consisting of two convolutional layers trained using the unsupervised convolutional STDP learning methodology, achieved classification accuracies of 91.1% and 97.6%, respectively, for inferring handwritten digits from the MNIST data set and a subset of natural images from the Caltech data set.
机译:由于其固有的事件驱动的处理能力,尖峰神经网络(SNNS)被出现为具有认知系统设计的有前途的脑的神经形状计算范式。通常用于模式识别的完全连接(FC)浅SNN要求大量的培训参数来实现竞争的分类精度。在本文中,我们提出了由堆叠卷积层的层次构成的深尖峰卷积神经网络(Spicnn),其次是空间池池和最终Fc层。通过共享突触重量核相互连接的生物合理的泄漏 - 整合和火(LIF)神经元填充了网络。我们使用Spike-Timing Incument的可塑性(STDP)以无监视的方式培训卷积粒层逐层,使其能够自学习构成输入模式的特征。为了进一步提高特征学习效率,我们建议使用使用基于STDP的突触权重更新训练的较小的3x3内核,这些突触重量更新在迷你批次的输入模式上执行。我们的深度Spicnn,由使用无监督的卷积STDP学习方法训练的两个卷积层,分别实现了91.1%和97.6%的分类精度,用于从Mnist数据集推断手写数字和来自CALTECH数据集的自然图像的子集。

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