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Region Proposal for Pattern Spotting in Historical Document Images

机译:历史文献图像中的图案斑点区域建议

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Pattern spotting consists in searching in a document image for the occurrences of a queried graphical object. The main challenge in pattern spotting is that the query image is generally small and the occurrences may be located at any random places in the image. Rather than exhaustively indexing all possible subwindows extracted from the document images, the common way is to rely on a segmentation or a document layout analysis to limit the search space. However, there is no segmentation nor document layout analysis technique reliable enough for historical document images. Region proposal, a technique used to generate a set of regions potentially containing an object, has contributed to many state of the art object detection systems recently. Although it is initially proposed for object detection, we will show that region proposal also offers promising results for document images, particularly in the case of pattern spotting. In this paper, we aim at investigating the use of region proposal to produce high quality subwindows to replace the usual document layout analysis step and the blind sliding windowing step. From experiments conducted on the DocExplore dataset, we show that region proposal generates a comparable number of subwindows while helping the system to achieve significant better results than the system built with commonly used layout analysis techniques.
机译:模式识别包括在文档图像中搜索查询的图形对象的出现。模式识别中的主要挑战是查询图像通常很小,并且出现的位置可能位于图像中的任何随机位置。常用的方法不是依靠索引或文档布局分析来限制搜索空间,而不是穷尽地索引从文档图像中提取的所有可能的子窗口。但是,没有足够的历史文档图像分割和文档布局分析技术。区域提议是一种用于生成可能包含一个对象的区域集的技术,最近已为许多先进的对象检测系统做出了贡献。尽管最初建议将其用于物体检测,但我们将表明,区域建议还可以为文档图像提供有希望的结果,尤其是在图案斑点的情况下。在本文中,我们旨在研究使用区域提议来生成高质量的子窗口,以代替通常的文档布局分析步骤和盲滑动窗口化步骤。通过在DocExplore数据集上进行的实验,我们显示,区域提议可生成相当数量的子窗口,同时帮助该系统获得比使用常用布局分析技术构建的系统更好的显着结果。

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