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

机译:利用深形态改善阿拉伯语手写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:阿拉伯语手写识别(HR)是由于阿拉伯语连通的字母形式,致癌作用和丰富的形态而有挑战性的问题。在本文中,我们将HR识别错误的任务免于生产这些词的校正的任务。我们考虑各种语言(形态学和句法)和非语言特征,以自动识别这些错误。我们最好的方法在简单但合理的基线上实现了大约〜15%的F-Score。一个详细的错误分析表明,语言特征,如引理(即引文)模型,有助于提高HR-ERROR检测,我们预期的位置:语义不连贯的错误词。

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