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A Simple Conceptor Model for Hand-written-digit Recognition

机译:手写数字识别的简单概念或模型

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摘要

Traditional recognitions of the MNIST hand-written-digits need vast amounts of datasets to assure high accuracy based on artificial neural networks (ANNs). In this paper, we present a simple preprocessing method for image classification. Firstly, the image pixels are converted into spike streams by using the Poisson distribution method. Similar as the integration of synaptic current in brain, spike or binary streams are integrated into continuous signals which are used to feed into the input layer of the conceptor network. The conceptor network is a recurrent neural network used to generate high-dimensional dynamic information. We use the MNIST database to investigate the computational performance of this model. Our results show that this method can achieve high recognition accuracy with much smaller training samples (6000 in this model V.S. 60000 in traditional other methods). Note that in this model, information for each image is decoded into a continuous sequence and fully analyzed through the conceptor network. Therefore, the number of training samples can be remarkably reduced.
机译:MNIST手写数字的传统识别需要大量数据集,以确保基于人工神经网络(ANN)的高精度。在本文中,我们提出了一种用于图像分类的简单预处理方法。首先,使用泊松分布方法将图像像素转换为尖​​峰流。类似于大脑中突触电流的整合,尖峰或二进制流被整合到连续的信号中,这些信号用于馈入概念器网络的输入层。概念器网络是用于生成高维动态信息的递归神经网络。我们使用MNIST数据库调查此模型的计算性能。我们的结果表明,该方法可以用更少的训练样本(在此模型中为6000,而在其他传统方法中为60000)实现较高的识别精度。请注意,在此模型中,每个图像的信息都被解码为连续的序列,并通过概念器网络进行了全面分析。因此,可以显着减少训练样本的数量。

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