论文标题
亚洲收藏家密封印记中的角色分割:试图根据古代角色字体检索
Character Segmentation in Asian Collector's Seal Imprints: An Attempt to Retrieval Based on Ancient Character Typeface
论文作者
论文摘要
收藏家的印章提供了有关书籍所有权的重要线索。它们包含许多与古代材料基本要素有关的信息,还显示了拥有的细节,与书籍的关系,收藏家的身份及其社会地位和财富等。亚洲收藏家通常使用艺术古代人物而不是现代人物来制作印章。除了所有者的名字外,还使用其他几个单词来表达更深刻的含义。自动认识这些角色的系统可以帮助发烧友和专业人士更好地了解这些印章的背景信息。但是,由于某些密封的样本很少,而且大多数是降级图像,因此缺乏训练数据和标记图像。有必要找到充分利用此类稀缺数据的新方法。尽管这些数据可在线获得,但它们不包含有关字符置换的信息。这项研究的目的是提供检索工具,有助于从亚洲收藏家印章中获得更多信息,而无需消耗大量计算资源。在本文中,提出了一种字符分割方法,以预测候选字符的区域,而没有任何包含字符坐标信息的训练数据。还提出了一个基于检索的识别系统,以支持密封检索和匹配。实验结果表明,提出的字符分割方法在亚洲收藏家的密封件上表现良好,其中92%的测试数据正确分段。
Collector's seals provide important clues about the ownership of a book. They contain much information pertaining to the essential elements of ancient materials and also show the details of possession, its relation to the book, the identity of the collectors and their social status and wealth, amongst others. Asian collectors have typically used artistic ancient characters rather than modern ones to make their seals. In addition to the owner's name, several other words are used to express more profound meanings. A system that automatically recognizes these characters can help enthusiasts and professionals better understand the background information of these seals. However, there is a lack of training data and labelled images, as samples of some seals are scarce and most of them are degraded images. It is necessary to find new ways to make full use of such scarce data. While these data are available online, they do not contain information on the characters'position. The goal of this research is to provide retrieval tools assist in obtaining more information from Asian collector's seals imprints without consuming a lot of computational resources. In this paper, a character segmentation method is proposed to predict the candidate characters'area without any labelled training data that contain character coordinate information. A retrieval-based recognition system that focuses on a single character is also proposed to support seal retrieval and matching. The experimental results demonstrate that the proposed character segmentation method performs well on Asian collector's seals, with 92% of the test data being correctly segmented.