使用深度学习神经网络的手写阿拉伯数字识别

Akm Ashiquzzaman, A. Tushar
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引用次数: 116

摘要

手写体字符识别是一个活跃的研究领域,在许多领域都有应用。这一领域过去和最近的研究主要集中在各种语言上。阿拉伯语是一种研究范围仍然广泛的语言,它是世界上最流行的语言之一,在语法上与其他主要语言不同。Das et al. b[1]是阿拉伯语手写数字识别研究的先驱。在本文中,我们提出了一种基于深度学习神经网络的新算法,该算法使用适当的激活函数和正则化层,与现有的阿拉伯数字识别方法相比,该算法的准确率显着提高。该模型给出了97.4%的准确率,这是实验中使用的数据集记录的最高准确率。我们还提出了对[1]中描述的方法的修改,其中我们的方法与[1]的精度相同,值为93.8%。
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Handwritten Arabic numeral recognition using deep learning neural networks
Handwritten character recognition is an active area of research with applications in numerous fields. Past and recent works in this field have concentrated on various languages. Arabic is one language where the scope of research is still widespread, with it being one of the most popular languages in the world and being syntactically different from other major languages. Das et al. [1] has pioneered the research for handwritten digit recognition in Arabic. In this paper, we propose a novel algorithm based on deep learning neural networks using appropriate activation function and regularization layer, which shows significantly improved accuracy compared to the existing Arabic numeral recognition methods. The proposed model gives 97.4 percent accuracy, which is the recorded highest accuracy of the dataset used in the experiment. We also propose a modification of the method described in [1], where our method scores identical accuracy as that of [1], with the value of 93.8 percent.
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