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Filled-in Document Identification Using Local Features and a Direct Voting Scheme

机译:使用本地特征和直接投票方案的填写文件识别

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摘要

In this work, an approach combining local representations with a direct voting scheme on a k-nearest neighbors classifier to identify filled-in document images is presented. A document class is represented by a high number of local feature vectors selected from its reference image using a given criterion. In the test phase, a number of vectors are equally selected from an image and used to classify it. The experimental results show that the parameterization is not critical, and good performances in terms of error-rate and processing time can be obtained, even though the test documents contain a large proportion of filled-in regions, obviously not present in the reference images.
机译:在这项工作中,提出了一种方法,在k最近邻分类器上结合了本地表示和直接投票方案,以识别填写的文档图像。使用给定的标准从文档参考图像中选择大量的局部特征向量来表示文档类别。在测试阶段,从图像中平均选择多个向量,并将其分类。实验结果表明,参数设置不是关键性的,即使测试文档包含大量的填充区域(显然在参考图像中不存在),在错误率和处理时间方面也可以获得良好的性能。

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