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A very high accuracy handwritten character recognition system for Farsi/Arabic digits using Convolutional Neural Networks

机译:使用卷积神经网络的Farsi /阿拉伯语数字的高精度手写字符识别系统

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In this paper, a new method is presented for recognizing the handwritten Farsi/Arabic digits by fusing the recognition results of a number of Convolutional Neural Networks with gradient descent training algorithm. Convolutional Neural Networks are a type of neural networks that are biologically inspired from human visual system which combines feature extraction and classification stages. This paper is concentrated on two main contributions. The first one is automatic extraction of input pattern's features by using a CNN for Farsi digits and the second one is fusing the results of boosted classifiers to compensate the recognizers' errors. The difference between competing systems is in the training set, which the frequency of samples that are “hard to recognize” were become higher in boosted classifiers. In addition, two rejection strategies were proposed and evaluated to find out “hard to recognize” samples. The experiments were conducted on extended IFH-CDB test database. The results reveal a very high accuracy classifier outperforming most of the previous systems. The achieved result shows 99.17% in recognition rate. In addition, the result was grown up to 99.98% after rejection of ten percents of “hard to recognize” samples.
机译:在本文中,提出了一种通过融合具有梯度下降训练算法的许多卷积神经网络的识别结果来识别手写的Farsi /阿拉伯语数字的新方法。卷积神经网络是一种从人类视觉系统的生物网络的一种神经网络,其结合了特征提取和分类阶段。本文集中在两个主要贡献中。第一个是通过使用Farsi数字的CNN自动提取输入模式的特征,第二个是融合升压分类器的结果以补偿识别器的错误。竞争系统之间的差异在训练集中,其中“难以识别”的样本频率在升压分类器中变得更高。此外,提出了两次拒绝策略,并评估了“难以识别”样本。实验在延期的IFH-CDB测试数据库上进行。结果揭示了一个非常高的精度分类器,优于以前的大部分系统。达到的结果显示了99.17%的识别率。此外,在排斥次数“难以识别”样本后,结果在抑制后的增长率高达99.98%。

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