一种基于松弛特征匹配的无分词手写词识别方法

A. Hast, A. Fornés
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引用次数: 13

摘要

历史手写文档的自动识别仍然被认为是一项具有挑战性的任务。由于这个原因,单词点选成为使用户可以使用这些文档中包含的信息的一个很好的替代方法。单词查找被定义为检索文档集合中查询词的所有实例的任务,成为信息检索的有用工具。在本文中,我们提出了一种能够处理大型文档集合的无分词点词方法。我们的方法受到了已经应用于图像匹配和检索的特征匹配算法的启发。由于手写文字的形状不同,因此无法得到精确的变换。然而,通过使用基于傅里叶的描述符和RANSAC的另一种称为PUMA的方法,可以实现足够程度的松弛。通过历史婚姻记录对该方法进行了评估,取得了令人满意的结果。
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A Segmentation-Free Handwritten Word Spotting Approach by Relaxed Feature Matching
The automatic recognition of historical handwritten documents is still considered a challenging task. For this reason, word spotting emerges as a good alternative for making the information contained in these documents available to the user. Word spotting is defined as the task of retrieving all instances of the query word in a document collection, becoming a useful tool for information retrieval. In this paper we propose a segmentation-free word spotting approach able to deal with large document collections. Our method is inspired on feature matching algorithms that have been applied to image matching and retrieval. Since handwritten words have different shape, there is no exact transformation to be obtained. However, the sufficient degree of relaxation is achieved by using a Fourier based descriptor and an alternative approach to RANSAC called PUMA. The proposed approach is evaluated on historical marriage records, achieving promising results.
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