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Kernel Grassmannian distances and discriminant analysis for face recognition from image sets

机译:核格拉斯曼距离和判别分析用于从图像集中识别人脸

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摘要

We address the problem of face recognition from image sets, where subject-specific subspaces instead of image vectors are compared. Previous methods based on Grassmannian subspace distances mainly take linear subspaces as input. The non-linearity exists when the input data contain complex structure such as pose changes. We generalize Grassmannian distances into high dimensional feature space with kernel trick to handle the underlying non-linearity in data. We show that kernel Grassmannian distances in feature space can be implicitly computed from the input data. Furthermore, we propose to use projection kernel in feature space for discriminant analysis. Comparisons with several state-of-the-art methods were performed on two databases, CMU PIE and YaleB. The proposed methods have demonstrated promising performance.
机译:我们解决了从图像集中进行面部识别的问题,在该图像集中比较了特定于对象的子空间而不是图像向量。先前基于Grassmannian子空间距离的方法主要将线性子空间作为输入。当输入数据包含复杂的结构(例如姿势变化)时,存在非线性。我们利用核技巧将格拉斯曼距离推广到高维特征空间中,以处理数据中潜在的非线性。我们表明,可以根据输入数据隐式计算特征空间中的核格拉斯曼距离。此外,我们建议在特征空间中使用投影核进行判别分析。在两个数据库CMU PIE和YaleB上进行了几种最先进方法的比较。所提出的方法已经证明了有希望的性能。

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