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NatCSNN: A Convolutional Spiking Neural Network for Recognition of Objects Extracted from Natural Images

机译:NatCSNN:卷积加标神经网络,用于识别从自然图像中提取的对象

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Biological image processing is performed by complex neural networks composed of thousands of neurons interconnected via thousands of synapses, some of which are excitatory and others inhibitory. Spiking neural models are distinguished from classical neurons by being biological plausible and exhibiting the same dynamics as those observed in biological neurons. This paper proposes a Natural Convolutional Neural Network (NatCSNN) which is a 3-layer bio-inspired Convolutional Spiking Neural Network (CSNN), for classifying objects extracted from natural images. A two-stage training algorithm is proposed using unsupervised Spike Timing Dependent Plasticity (STDP) learning (phase 1) and ReSuMe supervised learning (phase 2). The NatCSNN was trained and tested on the CIFAR-10 dataset and achieved an average testing accuracy of 84.7% which is an improvement over the 2-layer neural networks previously applied to this dataset.
机译:生物图像处理是由复杂的神经网络执行的,该网络由成千上万的神经元组成,这些神经元通过成千上万的突触相互连接,其中一些是兴奋性的,而其他则是抑制性的。尖峰神经模型与经典神经元的区别在于生物学上合理,并表现出与在生物学神经元中观察到的动力学相同的动力学。本文提出了一种自然卷积神经网络(NatCSNN),它是一种三层生物启发式卷积掺料神经网络(CSNN),用于对从自然图像中提取的对象进行分类。提出了一种两阶段训练算法,该算法使用无监督的Spike Timing依赖可塑性(STDP)学习(阶段1)和ReSuMe监督学习(阶段2)。 NatCSNN在CIFAR-10数据集上进行了培训和测试,平均测试准确度为84.7%,与以前应用于该数据集的2层神经网络相比有所提高。

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