OCR-independent and segmentation-free word-spotting in handwritten Arabic Archive documents

N. Aouadi, A. Kacem
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引用次数: 2

Abstract

In this paper, a word-spotting approach is presented that can help in reading handwritten Arabic Archive Documents. Because of the low quality of these documents, the proposed approach is free segmentation, independent of OCR, using a global transformation of word images. It is a based learning approach which employs Generalized Hough Transform (GHT) technique. It detects words, described by their models, in documents images by finding the model's position in the image. With the GHT, the problem of finding the model's position is transformed to a problem of finding the transformation's parameter that maps the model into the image. Parameters such as Hough threshold and distance between voting points are considered for a better location and recognition of words. We tested our system on registers from the 19th century onwards, held in the National Archives of Tunisia. Our first experiments reach an average of 94% of well-spotted words.
手写体阿拉伯语档案文档中与ocr无关和无分词的单词点选
在本文中,提出了一种单词识别方法,可以帮助阅读手写的阿拉伯语档案文件。由于这些文档的质量较低,本文提出的方法是自由分割,独立于OCR,使用词图像的全局变换。它是一种基于广义霍夫变换(GHT)的学习方法。它通过找到模型在图像中的位置来检测文档图像中由模型描述的单词。使用GHT,查找模型位置的问题被转换为查找将模型映射到图像的转换参数的问题。为了更好地定位和识别单词,考虑了霍夫阈值和投票点之间的距离等参数。我们在突尼斯国家档案馆保存的19世纪以来的登记册上测试了我们的系统。我们的第一个实验平均达到了94%的正确标记词。
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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