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Human action recognition by learning bases of action attributes and parts

机译:通过学习动作属性和部位的基础来识别人的动作

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In this work, we propose to use attributes and parts for recognizing human actions in still images. We define action attributes as the verbs that describe the properties of human actions, while the parts of actions are objects and poselets that are closely related to the actions. We jointly model the attributes and parts by learning a set of sparse bases that are shown to carry much semantic meaning. Then, the attributes and parts of an action image can be reconstructed from sparse coefficients with respect to the learned bases. This dual sparsity provides theoretical guarantee of our bases learning and feature reconstruction approach. On the PASCAL action dataset and a new “Stanford 40 Actions” dataset, we show that our method extracts meaningful high-order interactions between attributes and parts in human actions while achieving state-of-the-art classification performance.
机译:在这项工作中,我们建议使用属性和部分来识别静止图像中的人类动作。我们将动作属性定义为描述人类动作属性的动词,而动作的组成部分则是与动作密切相关的对象和姿势。我们通过学习一组稀疏的基础来共同对属性和部分进行建模,这些稀疏的基础被证明具有很多语义。然后,可以根据相对于所学基础的稀疏系数来重构动作图像的属性和部分。这种双重稀疏性为我们的基础学习和特征重建方法提供了理论保证。在PASCAL动作数据集和新的“斯坦福40动作”数据集上,我们证明了我们的方法提取了人类动作中属性和部分之间有意义的高阶交互,同时实现了最新的分类性能。

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