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Using Deep Morphology to Improve Automatic Error Detection in Arabic Handwriting Recognition

机译:使用深度形态改进阿拉伯文字识别中的自动错误检测

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Arabic handwriting recognition (HR) is a challenging problem due to Arabic's connected letter forms, consonantal diacritics and rich morphology. In this paper we isolate the task of identification of erroneous words in HR from the task of producing corrections for these words. We consider a variety of linguistic (morphological and syntactic) and non-linguistic features to automatically identify these errors. Our best approach achieves a roughly ~15% absolute increase in F-score over a simple but reasonable baseline. A detailed error analysis shows that linguistic features, such as lemma (i.e., citation form) models, help improve HR-error detection precisely where we expect them to: semantically incoherent error words.
机译:由于阿拉伯语的联系字母形式,辅音变音符号和丰富的词法,阿拉伯语的手写识别(HR)是一个具有挑战性的问题。在本文中,我们将识别HR中错误单词的任务与为这些单词产生更正的任务隔离开来。我们考虑了多种语言(形态和句法)和非语言功能来自动识别这些错误。我们最好的方法是在一个简单但合理的基准上将F分数的绝对值提高约15%。详细的错误分析表明,诸如引理(即引文形式)模型之类的语言功能有助于在我们期望的准确位置上改善HR错误检测:语义上不连贯的错误词。

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