用于文档搜索的文档视觉相似性度量

Ildus Ahmadullin, J. Allebach, Niranjan Damera-Venkata, Jian Fan, S. Lee, Qian Lin, Jerry Liu, Eamonn O'Brien-Strain
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引用次数: 7

摘要

管理大型文档数据库已成为一项重要的任务。事实证明,在许多应用程序中,能够根据文档的视觉外观自动比较文档布局、分类和搜索文档是很有必要的。我们提出了一种基于文档视觉相似性近似度量函数的新算法。这种比较只基于文档的视觉外观,而不考虑其文本内容。我们根据三个文档组件(背景、文本和显著性)之间的距离函数来度量单页文档的相似性。每个文档分量表示为高斯混合分布;不同文档的分量之间的距离作为对应分布之间的海灵格距离的近似值计算。由于海灵格距离服从三角形不等式,它在文档数据库中最近邻搜索任务中具有良好的性能。因此,在文档数据库中查找类似文档所需的计算量可以大大减少。
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Document visual similarity measure for document search
Managing large document databases has become an important task. Being able to automatically compare document layouts and classify and search documents with respect to their visual appearance proves to be desirable in many applications. We propose a new algorithm that approximates a metric function between documents based on their visual similarity. The comparison is based only on the visual appearance of the document without taking into consideration its text content. We measure the similarity of single page documents with respect to distance functions between three document components: background, text, and saliency. Each document component is represented as a Gaussian mixture distribution; and distances between the components of different documents are calculated as an approximation of the Hellinger distance between corresponding distributions. Since the Hellinger distance obeys the triangle inequality, it proves to be favorable in the task of nearest neighbor search in a document database. Thus, the computation required to find similar documents in a document database can be significantly reduced.
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