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Log-Euclidean Metric Learning on Symmetric Positive Definite Manifold with Application to Image Set Classification

机译:对称正定歧管的日志欧几里德度量学习应用于图像集分类

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The manifold of Symmetric Positive Definite (SPD) matrices has been successfully used for data representation in image set classification. By endowing the SPD manifold with Log-Euclidean Metric, existing methods typically work on vector-forms of SPD matrix logarithms. This however not only inevitably distorts the geometrical structure of the space of SPD matrix logarithms but also brings low efficiency especially when the dimensionality of SPD matrix is high. To overcome this limitation, we propose a novel metric learning approach to work directly on logarithms of SPD matrices. Specifically, our method aims to learn a tangent map that can directly transform the matrix logarithms from the original tangent space to a new tangent space of more discriminability. Under the tangent map framework, the novel metric learning can then be formulated as an optimization problem of seeking a Mahalanobis-like matrix, which can take the advantage of traditional metric learning techniques. Extensive evaluations on several image set classification tasks demonstrate the effectiveness of our proposed metric learning method.
机译:对称正明(SPD)矩阵的歧管已成功用于图像集分类中的数据表示。通过使用Log-Euclidean度量赋予SPD歧管,现有方法通常在SPD矩阵对数的矢量形式上工作。然而,这不仅不可避免地扭曲了SPD矩阵对数的空间的几何结构,而且特别是当SPD矩阵的维度高时,特别是当SPD矩阵的维度高。为了克服这种限制,我们提出了一种新的公制学习方法,直接在SPD矩阵的对数上工作。具体而言,我们的方法旨在学习一个切线地图,可以直接将矩阵对数从原始切线空间转换为更辨别性的新切线。在切线地图框架下,可以将新颖的度量学习作为寻求类似Mahalanobis的矩阵的优化问题,这可以采用传统的公制学习技术的优势。对多种图像集分类任务的广泛评估展示了我们所提出的度量学习方法的有效性。

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