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Similarity Evaluation and Shape Feature Extraction for Character Pattern Retrieval to Support Reading Historical Documents

机译:相似性评估和形状特征提取,以便支持阅读历史文档

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We have many historical documents written in over 1,000 years ago. Shape features of character patterns on the documents are unstable or missing because most of the documents have been stained and degraded deeply. Digital archives of the documents with accurate character pattern retrieval methods are helpful for archaeologists and historians. In this paper, we propose a similarity evaluation method for character patterns with missing shape parts. It collaboratively works with non-linear normalization for such patterns, and modifies the templates for each trial of the retrieval efficiently. In the experiences using 4,911 Kanji (Chinese origin) character patterns from the Japanese historical documents called mokkans, the method shows improvements of the retrieval accuracy. Also, we present a simple implementation of gradient feature extraction to compare the chain code feature with the gradient feature in the retrieval. As the result, the gradient feature works better than the chain code feature.
机译:我们有许多在1000多年前编写的历史文件。文档上的字符模式的形状特征是不稳定或缺失的,因为大多数文件都已染色并深入降级。具有准确的字符模式检索方法的文档的数字档案有助于考古学家和历史学家。在本文中,我们提出了一种具有缺失形状零件的字符模式的相似性评估方法。它协作地与这种模式的非线性归一化合作,并有效地修改了每个试验的模板。在使用来自日文历史文档的4,911 kanji(中国原产地)角色模式的经验中,该方法显示了检索精度的改进。此外,我们介绍了梯度特征提取的简单实现,以将链代码特征与检索中的梯度特征进行比较。结果,梯度特征优于链代码功能。

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