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Improving the DBLSTM for on-line Arabic handwriting recognition

机译:改善DBLSTM在线阿拉伯语手写识别

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Various applications involved in the computer recognition of pen-input handwritten words, such as the online form filling, text editing, note taking, and so on. Therefore, a great deal of research work tries to improve the recognition rate of those online words recognition systems resulting in several effective methods. Relevant results related to Latin and Chinese scripts have been achieved. However, the Arabic script has been neglected so far, which stimulated us to propose a new online Arabic handwriting recognition system based on DBLSTM that relies on three techniques that were applied in order to enhance its performance. First, the dropout was applied, in different positions, to prevent overfitting. Then, ReLU and Maxout units were added, in different ways, to overcome the vanishing gradient problem. These proposed systems were tested on a large database ADAB to prove its performance against difficult conditions such as the variety of writers, the large vocabulary and the diversity of style. According to the experimental results and compared to the baseline system, the best tested architecture gives a reduction of 10.99% in label error rate.
机译:各种应用程序涉及计算机识别笔输入手写单词,例如在线表单填充,文本编辑,注意,等等。因此,大量的研究工作试图提高在线单词识别系统的识别率,从而产生了几种有效方法。已经实现了与拉丁语和中国脚本相关的相关结果。然而,到目前为止,阿拉伯语剧本已被忽视,这促使我们提出了一种基于DBLSTM的新的在线阿拉伯语手写识别系统,依赖于应用的三种技术,以提高其性能。首先,在不同位置应用辍学以防止过度装备。然后,以不同方式添加Relu和Maxout单元以克服消失的梯度问题。这些建议的系统在大型数据库ADAB上进行了测试,以证明其对诸如作家,大型词汇和风格多样性等困难条件的性能。根据实验结果并与基线系统相比,最佳测试架构可降低10.99%的标签错误率。

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