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An Efficient Recognition Method for Handwritten Arabic Numerals Using CNN with Data Augmentation and Dropout

机译:使用CNN具有数据增强和辍学的CNN手写阿拉伯数字的有效识别方法

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Handwritten character recognition has been the center of research and a benchmark problem in the sector of pattern recognition and artificial intelligence, and it continues to be a challenging research topic. Due to its enormous application many works have been done in this field focusing on different languages. Arabic, being a diversified language has a huge scope of research with potential challenges. A convolutional neural network (CNN) model for recognizing handwritten numerals in Arabic language is proposed in this paper, where the dataset is subject to various augmentations in order to add robustness needed for deep learning approach. The proposed method is empowered by the presence of dropout regularization to do away with the problem of data overfitting. Moreover, suitable change is introduced in activation function to overcome the problem of vanishing gradient. With these modifications, the proposed system achieves an accuracy of 99.4% which performs better than every previous work on the dataset.
机译:手写字符识别一直是研究中心的研究中心和模式识别和人工智能部门的基准问题,并继续成为一个具有挑战性的研究主题。由于其巨大的应用程序,在这一领域的焦点上,许多作品专注于不同的语言。阿拉伯语是一种多样化的语言,具有巨大的研究范围,具有潜在的挑战。本文提出了一种卷积神经网络(CNN)模型,用于识别阿拉伯语中的手写数字,其中数据集受到各种增强的影响,以增加深度学习方法所需的鲁棒性。所提出的方法通过辍学正常化的存在而赋予了数据过度装备问题。此外,在激活函数中引入了合适的变化以克服消失梯度的问题。通过这些修改,所提出的系统可实现99.4%的准确性,它比数据集上的每个先前工作更好地执行。

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