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Nonlinear Cross-View Sample Enrichment for Action Recognition

机译:非线性跨视图样本富集动作识别

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Advanced action recognition methods are prone to limited generalization performances when trained on insufficient amount of data. This limitation results from the high expense to label training samples and their insufficiency to capture enough variability due to viewpoint changes. In this paper, we propose a solution that enriches training data by transferring their features across views. The proposed method is motivated by the fact that cross-view features of the same actions are highly correlated. First, we use kernel-based canonical correlation analysis (CCA) to learn nonlinear feature mappings that take multi-view data from their original feature spaces into a common latent space. Then, we transfer training samples from source to target views by back-projecting their CCA features from latent to view-dependent spaces. We experiment this cross-view sample enrichment process for action classification and we study the impact of several factors including kernel choices as well as the dimensionality of the latent spaces.
机译:在培训的数据量不足时,先进的动作识别方法在培训时易于有限的泛化性能。这种限制从高费用到标记训练样本和它们不足,因为观点变化导致捕获足够的变化。在本文中,我们提出了一种通过在视图中转移特征来丰富培训数据的解决方案。所提出的方法是通过相同动作的互相特征高度相关的事实的激励。首先,我们使用基于内核的规范相关性分析(CCA)来学习非线性特征映射,从他们的原始要素空间从其原始特征空间取得多视图数据。然后,我们通过从潜伏到视图依赖的空格的CCA功能将源从源传输到目标视图的训练样本。我们尝试这种跨视图样本浓缩过程进行行动分类,我们研究了几个因素的影响,包括内核选择以及潜在空间的维度。

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