A study on keyword detection using weighted similarity and character sequence for low-resolution medical documents

Makoto Kawamura, H. Kawanaka, Shunsuke Doi, Takahiro Suzuki, H. Takase, S. Tsuruoka
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Abstract

By the diffusion of Hospital Information Systems, many medical documents have been computerized. In addition, most of paper documents before computerization have been also scanned and archived as document images. These were usually converted to text data by using document analysis techniques and Optical Character Reader (OCR) and archived for medical document retrieval. However, the resolutions of some documents are not sufficient for character recognition because of storage spaces, scanning regulations and so on. Therefore, we cannot search desired keywords in the documents, as a result, these documents are not still used effectively in medical document retrieval systems. In this study, we discuss a keyword detection and extraction methods for these document images. As the first step of this study, this paper proposes a method to detect and extract desired words from these documents by using weighted dissimilarity and character sequence. Evaluation experiments using actual medical documents are conducted to discuss the effectiveness of the proposed method.
基于加权相似度和字符序列的低分辨率医疗文档关键词检测研究
随着医院信息系统的普及,许多医疗文件已实现计算机化。此外,计算机化之前的大多数纸质文件也被扫描并作为文件图像存档。这些数据通常通过使用文档分析技术和光学字符阅读器(OCR)转换为文本数据,并存档用于医疗文档检索。然而,由于存储空间、扫描规定等原因,一些文档的分辨率不足以进行字符识别。因此,我们无法在文档中搜索到所需的关键字,从而导致这些文档在医疗文档检索系统中仍然不能得到有效的利用。在本研究中,我们讨论了一种针对这些文档图像的关键字检测和提取方法。作为本研究的第一步,本文提出了一种利用加权不相似度和字符序列对这些文档进行目标词检测和提取的方法。利用实际医学文献进行了评价实验,讨论了该方法的有效性。
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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