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Support Vector Metric Learning on Symmetric Positive Definite Manifold

机译:对称正定流形上的支持向量度量学习

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The manifold of symmetric positive definite (SPD) matrices has drawn significant attention because of its widespread applications. SPD matrices provide compact nonlinear representations of data and form a special type of Riemannian manifold. The direct application of support vector machines on SPD manifold maybe fails due to lack of samples per class. In this paper, we propose a support vector metric learning (SVML) model on SPD manifold. We define a positive definite kernel for point pairs on SPD manifold and transform metric learning on SPD manifold to a point pair classification problem. The metric learning problem can be efficiently solved by standard support vector machines. Compared with classifying points on SPD manifold by support vector machines directly, SVML effectively learns a distance metric for SPD matrices by training a binary support vector machine model. Experiments on video based face recognition, image set classification, and material classification show that SVML outperforms the state-of-the-art metric learning algorithms on SPD manifold.
机译:对称正定(SPD)矩阵的流形由于其广泛的应用而备受关注。 SPD矩阵提供数据的紧凑非线性表示形式,并形成一种特殊的黎曼流形。支持向量机在SPD歧管上的直接应用可能由于每个类的样本不足而失败。在本文中,我们提出了基于SPD流形的支持向量度量学习(SVML)模型。我们为SPD歧管上的点对定义一个正定核,并将SPD歧管上的度量学习转换为一个点对分类问题。度量学习问题可以通过标准支持向量机有效解决。与直接通过支持向量机对SPD歧管上的点进行分类相比,SVML通过训练二进制支持向量机模型有效地学习了SPD矩阵的距离度量。基于视频的面部识别,图像集分类和材料分类的实验表明,SVML优于SPD流形上最新的度量学习算法。

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