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Learning weights with STDP to build prototype images for classification

机译:使用STDP学习权重构建原型图像进行分类

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摘要

The combination of Spike Timing Dependent Plasticity (STDP) and latency coding used in a spiking neural network has been shown to learn hierarchical features. In this paper we propose a new way to classify images using an SVM. Prototype images are built from the weights learned in an unsupervised manner using STDP. The prototype images are cross correlated with the input image and the peak of the cross correlation with each prototype image is used as additional features for an SVM. The network, demonstrated on the MNIST data set, achieves 99.15% testing accuracy which is the best reported accuracy for a SNN with unsupervised training.
机译:已经显示了尖峰神经网络中使用的尖峰定时依赖性塑性(STDP)和等待时间编码的组合来学习分层特征。在本文中,我们提出了一种使用SVM对图像进行分类的新方法。使用STDP从无监督方式学习的权重构建原型图像。原型图像与输入图像相关联,并且与每个原型图像的互相关的峰值用作SVM的附加特征。在MNIST数据集上展示的网络实现了99.15%的测试精度,这是具有无监督培训的SNN的最佳报告准确性。

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