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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Visual object recognition using probabilistic kernel subspace similarity
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Visual object recognition using probabilistic kernel subspace similarity

机译:使用概率内核子空间相似度的视觉对象识别

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摘要

Probabilistic subspace similarity-based face matching is an efficient face recognition algorithm proposed by Moghaddam et al. It makes one basic assumption: the intra-class face image set spans a linear space. However, there are yet no rational geometric interpretations of the similarity under that assumption. This paper investigates two subjects. First, we present one interpretation of the intra-class linear subspace assumption from the perspective of manifold analysis, and thus discover the geometric nature of the similarity. Second, we also note that the linear subspace assumption does not hold in some cases, and generalize it to nonlinear cases by introducing kernel tricks. The proposed model is named probabilistic kernel subspace similarity (PKSS). Experiments on synthetic data and real visual object recognition tasks show that PKSS can achieve promising performance, and outperform many other current popular object recognition algorithms. (c) 2005 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:基于概率子空间相似度的人脸匹配是Moghaddam等人提出的一种有效的人脸识别算法。它有一个基本假设:类内人脸图像集跨越线性空间。但是,在该假设下,尚无关于相似性的合理几何解释。本文研究了两个主题。首先,我们从流形分析的角度介绍类内线性子空间假设的一种解释,从而发现相似性的几何本质。其次,我们还注意到线性子空间假设在某些情况下不成立,并通过引入核技巧将其推广到非线性情况。所提出的模型称为概率内核子空间相似度(PKSS)。对合成数据和真实视觉对象识别任务的实验表明,PKSS可以实现有希望的性能,并且胜过许多其他当前流行的对象识别算法。 (c)2005模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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