Encoder-Decoder Language Model for Khmer Handwritten Text Recognition in Historical Documents

Seanghort Born, Dona Valy, Phutphalla Kong
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Abstract

Correcting spelling errors in texts extracted from Khmer palm leaf manuscripts by handwritten text recognition (HTR) systems can be very challenging. A Khmer Language Model developed in this study aims to facilitate the task mentioned above. The proposed model utilizes long short-term memory (LSTM) modules applicable for improving the performance of text recognition which is to predict a sequence of characters as output. The architecture of the language model is based on an encoder-decoder mechanism which is composed of two parts: an encoder to capture the context of the input erroneous word and a decoder to decode and predict the correctly spelt output word. Experimental evaluations are conducted on a text corpus consisting of Khmer words extracted from Sleuk-Rith set.
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历史文献中高棉手写文本识别的编码器-解码器语言模型
通过手写文本识别(HTR)系统纠正从高棉棕榈叶手稿中提取的文本中的拼写错误是非常具有挑战性的。本研究开发的高棉语模型旨在促进上述任务。该模型利用了长短期记忆(LSTM)模块,用于提高文本识别的性能,即预测一系列字符作为输出。语言模型的体系结构基于一个编码器-解码器机制,该机制由两部分组成:一个编码器捕获输入错误单词的上下文,一个解码器解码并预测正确拼写的输出单词。对从Sleuk-Rith集合中提取的高棉语文本语料库进行了实验评价。
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