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Improving persian digit recognition by combining data augmentation and AlexNet

机译:通过结合数据增强和AlexNet改进波斯数字识别

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The present paper, has used deep learning for Persian handwritten digit recognition by which valuable discriminative features are extracted from Persian digits using a deep convolutional neural network. Afterwards, these features are fed to a linear support vector machine for classification. Hoda dataset, which is the largest dataset for Persian handwritten digit classification, was used for validation of the proposed method. In this paper, first the related works were investigated which used Hoda and then the proposed deep network was introduced. Because of the high number of parameters that should be trained in deep neural networks, a high number of training images should be used for training. To increase the number of training images, augmented images have been prepared by rotating the original images with 15, 30, 45, -15, -30 and -45 degrees. Based on the experiments, the proposed method outperformed other competing methods in terms of accuracy measure.
机译:本文将深度学习用于波斯手写数字识别,通过深度卷积神经网络从波斯数字中提取有价值的判别特征。然后,将这些特征输入到线性支持向量机中进行分类。 Hoda数据集是波斯手写数字分类的最大数据集,用于验证所提出的方法。本文首先研究了使用Hoda的相关工作,然后介绍了拟议的深度网络。由于应在深度神经网络中训练大量参数,因此应使用大量训练图像进行训练。为了增加训练图像的数量,已经通过将原始图像旋转15、30、45,-15,-30和-45度来准备增强图像。在实验的基础上,提出的方法在准确性方面优于其他竞争方法。

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