关键点匹配后滤镜使用SIFT和BRIEF在标志识别

V. Le, De Cao Tran
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引用次数: 4

摘要

本文提出了一种基于关键点匹配的标识识别方法。在一个文档检索系统上进行了应用和测试。首先,基于SIFT描述符空间中具有欧氏距离的两个最近邻,利用最近邻匹配规则估计匹配的关键点对;其次,使用具有BRIEF描述符空间和汉明距离的后滤波器对被第一步拒绝的关键点进行重新过滤。在一个知名的包含logo Tobacco-800的真实世界文档基准数据库上进行测试,我们的方法结合BRIEF post-filter在相同精度水平下增加了该方法的匹配关键点数量,并且在文档检索领域取得了比目前最先进的方法更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Key-point matching with post-filter using SIFT and BRIEF in logo spotting
In this paper, a method to spot and recognize logos based on key-point matching is proposed. It is applied and tested on a document retrieval system. First, the pairs of matched key-points are estimated by the nearest neighbor matching rule based on the two nearest neighbors in SIFT descriptor space with Euclidean distance. Second, a post-filter with BRIEF descriptor space and hamming distance is used to re-filter the key-points which are rejected by the first step. Tested on a well-known benchmark database of real world documents containing logos Tobacco-800, our method performs an increase in the number of matched key-points of the method combined with BRIEF post-filter at the same accuracy level, and achieves a better performance than the state-of-the-art methods in the field of document retrieval.
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