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Transfer Learning to improve Arabic handwriting text Recognition

机译:转移学习以改善阿拉伯语手写文本识别

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In recent years, the leveraging of deep learning approaches allows a great progress in text recognition task. But they usually need a considerable amount of training examples to learn a new model. Therefore, lack of data can be an issue when developing a new recognition model, especially for handwriting Arabic text recognition where the lack of databases is stilling an interested problem. In this context, the main contributions of this paper is based on transfer learning the parameters learned with a bigger mixed-fonts printed Arabic text database to handwriting one. Experiments shows the good improvement provide with this technique.
机译:近年来,利用深度学习方法允许在文本识别任务中取得巨大进展。但他们通常需要相当多的培训例子来学习一个新的模型。因此,在开发新的识别模型时,缺乏数据可能是一个问题,特别是对于手写阿拉伯语文本识别,其中缺乏数据库仍处于感兴趣的问题。在这种情况下,本文的主要贡献是基于传输学习,使用更大的混合字体被打印的阿拉伯文本数据库来学习的参数。实验表明了这种技术的良好改进。

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