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Learning and real-time classification of hand-written digits with spiking neural networks

机译:尖峰神经网络对手写数字进行学习和实时分类

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We describe a novel spiking neural network (SNN) for automated, real-time handwritten digit classification and its implementation on a GP-GPU platform. Information processing within the network, from feature extraction to classification is implemented by mimicking the basic aspects of neuronal spike initiation and propagation in the brain. The feature extraction layer of the SNN uses fixed synaptic weight maps to extract the key features of the image and the classifier layer uses the recently developed NormAD approximate gradient descent based supervised learning algorithm for spiking neural networks to adjust the synaptic weights. On the standard MNIST database images of handwritten digits, our network achieves an accuracy of 99.80% on the training set and 98.06% on the test set, with nearly 7x fewer parameters compared to the state-of-the-art spiking networks. We further use this network in a GPU based user-interface system demonstrating real-time SNN simulation to infer digits written by different users. On a test set of 500 such images, this real-time platform achieves an accuracy exceeding 97% while making a prediction within an SNN emulation time of less than 100 ms.
机译:我们描述了一种新颖的尖峰神经网络(SNN),用于自动实时手写数字分类及其在GP-GPU平台上的实现。网络中的信息处理,从特征提取到分类,是通过模仿神经元突波在大脑中的启动和传播的基本方面来实现的。 SNN的特征提取层使用固定的突触权重图来提取图像的关键特征,而分类器层使用最近开发的基于NormAD近似梯度下降的监督学习算法来加刺神经网络来调整突触权重。在标准的MNIST手写数字数据库图像上,我们的网络在训练集上达到了99.80%的精度,在测试集上达到了98.06%的精度,与最新的尖峰网络相比,其参数减少了近7倍。我们在基于GPU的用户界面系统中进一步使用了该网络,该系统演示了实时SNN仿真以推断不同用户所写的数字。在500个这样的图像的测试集上,该实时平台实现了超过97%的精度,同时在不到100 ms的SNN仿真时间内做出了预测。

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