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Sparse Modeling of Human Actions from Motion Imagery

机译:运动图像中人动作的稀疏建模

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An efficient sparse modeling pipeline for the classification of human actions from video is here developed. Spatio-temporal features that characterize local changes in the image are first extracted. This is followed by the learning of a class-structured dictionary encoding the individual actions of interest. Classification is then based on reconstruction, where the label assigned to each video comes from the optimal sparse linear combination of the learned basis vectors (action primitives) representing the actions. A low computational cost deep-layer model learning the inter-class correlations of the data is added for increasing discriminative power. In spite of its simplicity and low computational cost, the method outperforms previously reported results for virtually all standard datasets.
机译:这里开发了一种有效的稀疏建模管道,用于对视频中的人类动作进行分类。首先提取表征图像局部变化的时空特征。接下来是学习一个类结构的字典,该字典对感兴趣的各个动作进行编码。然后基于重建进行分类,其中分配给每个视频的标签来自表示动作的学习基础向量(动作原语)的最佳稀疏线性组合。学习数据的类间相关性的低计算成本深层模型被添加以提高判别能力。尽管该方法简单,计算成本低,但对于所有标准数据集而言,该方法的性能均优于先前报告的结果。

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