基于多特征组合的文档图像检索

Gaofeng Meng, N. Zheng, Yonghong Song, Yuanlin Zhang
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引用次数: 21

摘要

从大量的数字化页面中检索相关的文档图像是一个有意义且具有挑战性的问题,这些页面具有各种人为变化和扫描和打印引起的文档质量下降。我们试图通过混合方式组合多种不同类型的文档特性来解决这个问题。首先,提出了基于投影直方图和交叉数直方图的两种新的文档图像特征;其次,将所提出的两种特征与密度分布特征和局部二值模式特征结合在一个多级结构中,开发了一种新的文档图像检索系统;实验结果表明,该系统在检索不同类型的文档图像时具有很高的效率和鲁棒性,即使某些文档图像严重退化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Document Images Retrieval Based on Multiple Features Combination
Retrieving the relevant document images from a great number of digitized pages with different kinds of artificial variations and documents quality deteriorations caused by scanning and printing is a meaningful and challenging problem. We attempt to deal with this problem by combining up multiple different kinds of document features in a hybrid way. Firstly, two new kinds of document image features based on the projection histograms and crossings number histograms of an image are proposed. Secondly, the proposed two features, together with density distribution feature and local binary pattern feature, are combined in a multistage structure to develop a novel document image retrieval system. Experimental results show that the proposed novel system is very efficient and robust for retrieving different kinds of document images, even if some of them are severely degraded.
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