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TWO METHODS FOR FILLED-IN DOCUMENT IMAGE IDENTIFICATION USING LOCAL FEATURES

机译:使用本地特征填写文档图像标识的两种方法

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In this work, the task of document image classification is dealt with, particularly in the case of pre-printed forms, where a large part of the document can be filled-in with the result of a potentially very different image. A method for the selection of discriminative local features is presented and tested along with two different classification algorithms. The first one is an incremental version of the method proposed in (Arlandis et al., 2009), based on similarity searching around a set anchor points, and the second one is based on a direct voting scheme ((Arlandis et al., 2011)). Experiments on a document database consisting of real office documents with a very high variability, as well as on the NIST SD6 database, are presented. A confidence measure intended to reject unknown documents (those that have not been indexed in advance as a given document class) is also proposed and tested.
机译:在这项工作中,涉及文档图像分类的任务,特别是在预先打印的形式的情况下,可以通过潜在的非常不同的图像填充文档的大部分。呈现和测试了选择鉴别局部特征的方法以及两种不同的分类算法。第一个是(Arlandis等,2009)中提出的方法的增量版本,基于在集合锚点周围搜索的相似性,第二个是基于直接投票方案((阿兰迪斯等,2011年,2011年,2011年)))。展示了由具有非常高可变性以及NIST SD6数据库组成的文档数据库的实验,以及NIST SD6数据库。还提出并测试了旨在拒绝未知文件的置信度量(尚未提前索引的那些)和测试。

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