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保局投影在图像集匹配中的应用 被引量:2

LOCALITY PRESERVING PROJECTION AND ITS APPLICATION IN IMAGE SET MATCHING
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摘要 图像集匹配是模式识别领域研究的热点问题之一。从图像分布的局部结构出发,提出格拉斯曼流形上局部结构保持的图像集匹配方法。将图像集合张成的子空间投影到格拉斯曼流形,通过子空间之间的典型相关计算格拉斯曼核,将集合的相似性转换为流形上点之间的距离的计算。在基于图像集合的对象识别任务上测试提出的算法,实验结果表明,提出的方法在识别率上超越了当前主流的图像集匹配算法。 Image set matching is one of the research focuses in the field of pattern recognition.In this paper we propose an image set matching method with locality structure preserving on Grassmann manifold proceeding from the locality structure of image distribution.The subspaces spanned by the image set are mapped onto the Grassmann manifold,and the canonical correlation between subspaces is used to calculate the Grassmann kernel,then the similarity between the image sets is converted into the calculation of the distance between two points on manifold.The proposed method is tested in image set-based object recognition tasks.Experimental results show that the proposed method outperforms current mainstream image set matching methods in terms of recognition rate.
作者 曾青松
出处 《计算机应用与软件》 CSCD 2015年第6期304-307,共4页 Computer Applications and Software
基金 国家自然科学基金项目(51074097) 粤高职教育信息技术教指委2013年度项目(XXJS-2013-1025) 广州市番禺区科技计划项目(2010-专-12-10)
关键词 格拉斯曼流形 集合匹配 保局投影 模式识别 Grassmann manifold Set matching Locality preserving projection Pattern recognition
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参考文献15

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同被引文献21

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