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Kernel analysis on Grassmann manifolds for action recognition

机译:用于动作识别的格拉斯曼流形的内核分析

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Modelling video sequences by subspaces has recently shown promise for recognising human actions. Subspaces are able to accommodate the effects of various image variations and can capture the dynamic properties of actions. Subspaces form a non-Euclidean and curved Riemannian manifold known as a Grassmann manifold. Inference on manifold spaces usually is achieved by embedding the manifolds in higher dimensional Euclidean spaces. In this paper, we instead propose to embed the Grassmann manifolds into reproducing kernel Hilbert spaces and then tackle the problem of discriminant analysis on such manifolds. To achieve efficient machinery, we propose graph-based local discriminant analysis that utilises within-class and between-class similarity graphs to characterise intra-class compactness and inter-class separability, respectively. Experiments on KTH, UCF Sports, and Ballet datasets show that the proposed approach obtains marked improvements in discrimination accuracy in comparison to several state-of-the-art methods, such as the kernel version of affine hull image-set distance, tensor canonical correlation analysis, spatial-temporal words and hierarchy of discriminative space-time neighbourhood features.
机译:通过子空间对视频序列进行建模最近显示出了识别人类行为的希望。子空间能够适应各种图像变化的影响,并且可以捕获动作的动态属性。子空间形成一个非欧几里德和弯曲的黎曼流形,称为格拉斯曼流形。通常通过将流形嵌入更高维的欧几里得空间中来推断流形空间。在本文中,我们建议将Grassmann流形嵌入到可再生核Hilbert空间中,然后解决对这些流形进行判别分析的问题。为了获得有效的机制,我们提出了基于图的局部判别分析,该分析利用类内和类间相似性图分别表征类内紧实度和类间可分离性。在KTH,UCF Sports和Ballet数据集上进行的实验表明,与仿射船体图像集距离的内核版本,张量规范相关性等几种最新方法相比,该方法在识别准确度上有显着提高分析,时空词和区分时空邻域特征的层次结构。

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