Persian Handwritten Digit Recognition Using Combination of Convolutional Neural Network and Support Vector Machine Methods

M. Parseh, M. Rahmanimanesh, P. Keshavarzi
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引用次数: 12

Abstract

Persian handwritten digit recognition is one of the important topics of image processing which significantly considered by researchers due to its many applications. The most important challenges in Persian handwritten digit recognition is the existence of various patterns in Persian digit writing that makes the feature extraction step to be more complicated. Since the handcraft feature extraction methods are complicated processes and their performance level are not stable, most of the recent studies have concentrated on proposing a suitable method for automatic feature extraction. In this paper, an automatic method based on machine learning is proposed for high-level feature extraction from Persian digit images by using convolutional neural network (CNN). After that, a non-linear multi-class SVM classifier is used for data classification instead of fully connected layer in final layer of CNN. The proposed method has been applied to HODA dataset and obtained 99.56% of recognition rate. Experimental results are comparable with previous state-of-the-art methods.
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结合卷积神经网络和支持向量机方法的波斯语手写数字识别
波斯语手写体数字识别由于其广泛的应用,一直是图像处理领域备受研究者关注的重要课题之一。波斯语手写数字识别面临的最大挑战是,波斯语手写数字存在多种模式,使得特征提取步骤更加复杂。由于手工特征提取方法过程复杂,性能水平不稳定,近年来的研究大多集中在提出一种合适的自动特征提取方法上。本文提出了一种基于机器学习的卷积神经网络(CNN)波斯语数字图像高级特征自动提取方法。之后,在CNN的最后一层不再使用全连通层,而是使用非线性多类SVM分类器进行数据分类。将该方法应用于HODA数据集,识别率达到99.56%。实验结果与以往最先进的方法相当。
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