利用角点特征对应对词图像进行相似度排序

Jamie L. Rothfeder, Shaolei Feng, T. Rath
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引用次数: 93

摘要

图书馆中有大量手写的历史文献,由于没有可搜索的索引,这些文献不能在网上提供。单词点出的想法以前曾被提出作为一种解决方案,通过匹配单词图像为此类文档和集合创建索引。本文提出了一种基于外观的全字图像比较算法。该算法恢复两幅图像中感兴趣点的对应关系,然后利用这些对应关系构建相似度度量。然后,这种相似度度量可以用来对单词图像按照它们与查询图像的接近程度进行排序。我们在一组2372张质量合理的图像上实现了62.57%的平均精度,在一组3262张质量较差的图像上实现了15.49%的平均精度,这些图像甚至很难被人类阅读。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Corner Feature Correspondences to Rank Word Images by Similarity
Libraries contain enormous amounts of handwritten historical documents which cannot be made available on-line because they do not have a searchable index. The wordspotting idea has previously been proposed as a solution to creating indexes for such documents and collections by matching word images. In this paper we present an algorithm which compares whole word-images based on their appearance. This algorithm recovers correspondences of points of interest in two images, and then uses these correspondences to construct a similarity measure. This similarity measure can then be used to rank word-images in order of their closeness to a querying image. We achieved an average precision of 62.57% on a set of 2372 images of reasonable quality and an average precision of 15.49% on a set of 3262 images from documents of poor quality that are even hard to read for humans.
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