利用局部描述符学习字典上的稀疏性来定位符号

T. Do, S. Tabbone, O. R. Terrades
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引用次数: 3

摘要

本文提出了一种利用稀疏表示将符号点到图形文档中的新方法。更具体地说,字典是从定义在文档上的局部描述符的训练数据库中学习的。根据它们的稀疏表示,使用共享相似属性的兴趣点来定义兴趣区域。利用原始的信息检索技术,基于视觉词汇表的稀疏性,建立了兴趣区域和查询符号的向量模型,其中视觉词汇表是学习字典中的列。通过比较向量模型之间的相似度进行匹配。对SESYD数据集的评估表明,我们的方法是有前途的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spotting Symbol Using Sparsity over Learned Dictionary of Local Descriptors
This paper proposes a new approach to spot symbols into graphical documents using sparse representations. More specifically, a dictionary is learned from a training database of local descriptors defined over the documents. Following their sparse representations, interest points sharing similar properties are used to define interest regions. Using an original adaptation of information retrieval techniques, a vector model for interest regions and for a query symbol is built based on its sparsity in a visual vocabulary where the visual words are columns in the learned dictionary. The matching process is performed comparing the similarity between vector models. Evaluation on SESYD datasets demonstrates that our method is promising.
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