Classification of Persian handwritten digits using spiking neural networks

K. Kiani, Elmira Mohsenzadeh Korayem
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引用次数: 6

Abstract

In recent years Spiking Neural Networks (SNNs) have gained in popularity due to their low complexity. They have been used in many processes like learning and classification of data such as images. In this paper we have used the SNN Model, in order to have robust learning and classification of handwritten digits, i.e., to have a learning process which is persistent against changes and high noise levels. Due to the similarities among handwritten digits, the classifications have been erratic but the Deep Belief Network we have used in this paper solves this problem to a great extent. Our model consists of three layers. The first layer, composed of 225 neurons (15*15 pixels for each image), works as the receptor of input images. The middle layer is used for processes, encoding and network learning, while the last layer, which is composed of 10 neurons (as we have 10 distinct classes), does the job of prediction and classification of images. The model was implemented using MATLAB and we have used Hoda Persian handwritten digits dataset as our input images. The obtained results show that the implemented model can carry out, with good accuracy (95%), the learning and classification of images of handwritten digits with high levels of noise.
波斯语手写数字的脉冲神经网络分类
近年来,脉冲神经网络(SNNs)因其低复杂度而受到广泛欢迎。它们已被用于许多过程,如学习和图像等数据的分类。在本文中,我们使用SNN模型,以便对手写数字进行鲁棒学习和分类,即具有对变化和高噪声水平持续的学习过程。由于手写体数字之间的相似性,导致分类不稳定,而本文使用的深度信念网络在很大程度上解决了这一问题。我们的模型由三层组成。第一层由225个神经元(每个图像15*15像素)组成,作为输入图像的受体。中间层用于处理、编码和网络学习,而最后一层由10个神经元组成(因为我们有10个不同的类),负责图像的预测和分类。该模型使用MATLAB实现,我们使用Hoda波斯语手写数字数据集作为输入图像。实验结果表明,所实现的模型能够以较高的准确率(95%)对高噪声手写数字图像进行学习和分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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