The A2iA Arabic Handwritten Text Recognition System at the Open HaRT2013 Evaluation

Théodore Bluche, J. Louradour, Maxime Knibbe, Bastien Moysset, Mohamed Benzeghiba, Christopher Kermorvant
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引用次数: 45

Abstract

This paper describes the Arabic handwriting recognition systems proposed by A2iA to the NIST OpenHaRT2013 evaluation. These systems were based on an optical model using Long Short-Term Memory (LSTM) recurrent neural networks, trained to recognize the different forms of the Arabic characters directly from the image, without explicit feature extraction nor segmentation.Large vocabulary selection techniques and n-gram language modeling were used to provide a full paragraph recognition, without explicit word segmentation. Several recognition systems were also combined with the ROVER combination algorithm. The best system exceeded 80% of recognition rate.
A2iA阿拉伯语手写文本识别系统在Open HaRT2013的评估
本文介绍了A2iA提出的阿拉伯语手写识别系统对NIST OpenHaRT2013的评估。这些系统基于使用长短期记忆(LSTM)递归神经网络的光学模型,经过训练可以直接从图像中识别不同形式的阿拉伯字符,而不需要明确的特征提取或分割。使用大词汇选择技术和n-gram语言建模来提供完整的段落识别,而不需要明确的分词。几种识别系统也结合了ROVER组合算法。最好的系统识别率超过80%。
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