Named Entity Recognition from Unstructured Handwritten Document Images

Chandranath Adak, B. Chaudhuri, M. Blumenstein
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引用次数: 18

Abstract

Named entity recognition is an important topic in the field of natural language processing, whereas in document image processing, such recognition is quite challenging without employing any linguistic knowledge. In this paper we propose an approach to detect named entities (NEs) directly from offline handwritten unstructured document images without explicit character/word recognition, and with very little aid from natural language and script rules. At the preprocessing stage, the document image is binarized, and then the text is segmented into words. The slant/skew/baseline corrections of the words are also performed. After preprocessing, the words are sent for NE recognition. We analyze the structural and positional characteristics of NEs and extract some relevant features from the word image. Then the BLSTM neural network is used for NE recognition. Our system also contains a post-processing stage to reduce the true NE rejection rate. The proposed approach produces encouraging results on both historical and modern document images, including those from an Australian archive, which are reported here for the very first time.
非结构化手写文档图像的命名实体识别
命名实体识别是自然语言处理领域的一个重要课题,而在文档图像处理中,在不使用任何语言知识的情况下,命名实体识别具有很大的挑战性。在本文中,我们提出了一种直接从离线手写非结构化文档图像中检测命名实体(NEs)的方法,无需明确的字符/单词识别,并且很少借助自然语言和脚本规则。在预处理阶段,首先对文档图像进行二值化,然后对文本进行分割。还执行单词的倾斜/倾斜/基线更正。预处理后的单词被发送给网元识别。我们分析了网元的结构和位置特征,并从词图像中提取了一些相关特征。然后利用BLSTM神经网络进行网元识别。我们的系统还包含一个后处理阶段,以降低真正的网元拒绝率。提议的方法在历史和现代文件图像上产生了令人鼓舞的结果,包括来自澳大利亚档案馆的图像,这是第一次在这里报道。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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