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Action Recognition Using Nonnegative Action Component Representation and Sparse Basis Selection

机译:使用非负动作成分表示和稀疏基础选择的动作识别

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In this paper, we propose using high-level action units to represent human actions in videos and, based on such units, a novel sparse model is developed for human action recognition. There are three interconnected components in our approach. First, we propose a new context-aware spatial-temporal descriptor, named locally weighted word context, to improve the discriminability of the traditionally used local spatial-temporal descriptors. Second, from the statistics of the context-aware descriptors, we learn action units using the graph regularized nonnegative matrix factorization, which leads to a part-based representation and encodes the geometrical information. These units effectively bridge the semantic gap in action recognition. Third, we propose a sparse model based on a joint $l_{2,1}$ -norm to preserve the representative items and suppress noise in the action units. Intuitively, when learning the dictionary for action representation, the sparse model captures the fact that actions from the same class share similar units. The proposed approach is evaluated on several publicly available data sets. The experimental results and analysis clearly demonstrate the effectiveness of the proposed approach.
机译:在本文中,我们建议使用高级动作单位来表示视频中的人类动作,并基于此类单位,开发出一种新颖的稀疏模型来进行人类动作识别。我们的方法包含三个相互关联的组件。首先,我们提出了一种新的感知上下文的时空描述符,称为局部加权词上下文,以改善传统使用的局部时空描述符的可分辨性。其次,从上下文感知描述符的统计数据中,我们使用图正则化非负矩阵分解来学习动作单元,从而得出基于零件的表示形式并对几何信息进行编码。这些单元有效地弥补了动作识别中的语义鸿沟。第三,我们提出了基于联合$ l_ {2,1} $-范数的稀疏模型,以保留代表项并抑制动作单元中的噪声。直观地,当学习用于表示动作的字典时,稀疏模型捕获了来自同一类的动作共享相似单位的事实。在几种公开可用的数据集上对提出的方法进行了评估。实验结果和分析清楚地证明了该方法的有效性。

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