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Set-to-Set Distance Metric Learning on SPD Manifolds

机译:在SPD流形上进行设置到距离的距离度量学习

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The Symmetric Positive Definite (SPD) matrix on the Rie-mannian manifold has become a prevalent representation in many computer vision tasks. However, learning a proper distance metric between two SPD matrices is still a challenging problem. Existing metric learning methods of SPD matrices only regard an SPD matrix as a global representation and thus ignore different roles of intrinsic properties in the SPD matrix. In this paper, we propose a novel SPD matrix metric learning method of discovering SPD matrix intrinsic properties and measuring the distance considering different roles of intrinsic properties. In particular, the intrinsic properties of an SPD matrix are discovered by projecting the SPD matrix to multiple low-dimensional SPD manifolds, and the obtained low-dimensional SPD matrices constitute a set. Accordingly, the metric between two original SPD matrices is transformed into a set-to-set metric on multiple low-dimensional SPD manifolds. Based on the learnable alpha-beta divergence, the set-to-set metric is computed by summarizing multiple alpha-beta divergences assigned on low-dimensional SPD manifolds, which models different roles of intrinsic properties. The experimental results on four visual tasks demonstrate that our method achieves the state-of-the art performance.
机译:黎曼流形上的对称正定(SPD)矩阵已成为许多计算机视觉任务中的普遍表示。但是,学习两个SPD矩阵之间的适当距离度量仍然是一个难题。 SPD矩阵的现有度量学习方法仅将SPD矩阵视为全局表示,因此忽略了SPD矩阵中固有属性的不同作用。在本文中,我们提出了一种新颖的SPD矩阵度量学习方法,该方法可以发现SPD矩阵的内在特性并考虑内在特性的不同作用来测量距离。特别地,通过将​​SPD矩阵投影到多个低维SPD流形上来发现SPD矩阵的固有特性,并且所获得的低维SPD矩阵构成一个集合。因此,两个原始SPD矩阵之间的度量将转换为多个低维SPD流形上的一组对一组度量。基于可学习的alpha-beta散度,通过汇总分配给低维SPD流形的多个alpha-beta散度来计算设置度量,该模型对固有属性的不同作用进行建模。在四个视觉任务上的实验结果表明,我们的方法达到了最先进的性能。

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