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Variant Grassmann Manifolds: A Representation Augmentation Method for Action Recognition

机译:变体格拉斯曼流形:动作识别的表示增强方法

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In classification tasks, classifiers trained with finite examples might generalize poorly to new data with unknown variance. For this issue, data augmentation is a successful solutionwhere numerous artificial examples are added to training sets. In this article, we focus on the data augmentation for improving the accuracy of action recognition, where action videos are modeled by linear dynamical systems and approximately represented as linear subspaces. These subspace representations lie in a non-Euclidean space, named Grassmann manifold, containing points as orthonormal matrixes. It is our concern that poor generalization may result from the variance of manifolds when data come from different sources or classes. Thus, we introduce infinitely many variant Grassmann manifolds (VGM) subject to a known distribution, then represent each action video as different Grassmann points leading to augmented representations. Furthermore, a prior based on the stability of subspace bases is introduced, so themanifold distribution can be adaptively determined, balancing discrimination and representation. Experimental results of multi-class and multi-source classification show that VGM softmax classifiers achieve lower test error rates compared to methods with a single manifold.
机译:在分类任务中,用有限示例训练的分类器可能无法很好地推广到方差未知的新数据。对于此问题,数据增强是一种成功的解决方案,其中将大量的人工示例添加到训练集中。在本文中,我们将重点放在数据增强上以提高动作识别的准确性,其中动作视频是由线性动力系统建模并近似表示为线性子空间。这些子空间表示位于名为草曼流形的非欧氏空间中,其中包含点作为正交矩阵。我们担心的是,当数据来自不同的来源或类别时,流形的差异可能会导致泛化不佳。因此,我们引入服从已知分布的无限多种变体Grassmann流形(VGM),然后将每个动作视频表示为导致增强表示的不同Grassmann点。此外,引入了基于子空间基的稳定性的先验,因此可以自适应地确定它们的多重分布,从而平衡区分和表示。多类和多源分类的实验结果表明,与使用单个流形的方法相比,VGM softmax分类器实现了更低的测试错误率。

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