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基于支持向量域描述的图像集匹配*

, PP. 735-740

Keywords: 支持向量域描述,图像集匹配,集合相似性,对象匹配

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Abstract:

提出一种基于支持向量域描述的图像集匹配方法.该方法首先通过支持向量机学习,将每个图像集合映射到高维特征空间,使用支持向量域对图像集合建模,建立的模型使用一个包含大部分样本的最小闭球表示.然后引入基于支持向量域之间距离的相似性度量,将集合的匹配转换为成对的支持向量域之间的距离计算.最后在基于集合的人脸和对象识别任务中分别进行测试,文中方法的识别率在ETH80、HondaUCSD和YouTube数据库上分别达到96.37%、100%和95.32%,优于其他方法.

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