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Pipelining Localized Semantic Features for Fine-Grained Action Recognition

机译:流水线化局部语义特征以进行细粒度的动作识别

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In fine-grained action (object manipulation) recognition, it is important to encode object semantic (contextual) information, i.e., which object is being manipulated and how it is being operated. However, previous methods for action recognition often represent the semantic information in a global and coarse way and therefore cannot cope with fine-grained actions. In this work, we propose a representation and classification pipeline which seamlessly incorporates localized semantic information into every processing step for fine-grained action recognition. In the feature extraction stage, we explore the geometric information between local motion features and the surrounding objects. In the feature encoding stage, we develop a semantic-grouped locality-constrained linear coding (SG-LLC) method that captures the joint distributions between motion and object-in-use information. Finally, we propose a semantic-aware multiple kernel learning framework (SA-MKL) by utilizing the empirical joint distribution between action and object type for more discriminative action classification. Extensive experiments are performed on the large-scale and difficult fine-grained MPII cooking action dataset. The results show that by effectively accumulating localized semantic information into the action representation and classification pipeline, we significantly improve the fine-grained action classification performance over the existing methods.
机译:在细粒度动作(对象操纵)识别中,重要的是对对象语义(上下文)信息进行编码,即,对哪个对象进行操纵以及如何对其进行操作。但是,先前的动作识别方法通常以全局和粗略的方式表示语义信息,因此无法应对细粒度的动作。在这项工作中,我们提出了一种表示和分类管道,该管道将本地化的语义信息无缝地结合到每个处理步骤中,以实现细粒度的动作识别。在特征提取阶段,我们探索局部运动特征与周围物体之间的几何信息。在特征编码阶段,我们开发了一种语义分组的局部约束线性编码(SG-LLC)方法,该方法可捕获运动信息和使用对象信息之间的联合分布。最后,我们通过利用动作与对象类型之间的经验联合分布来提出更具语义的多核学习框架(SA-MKL),以进行更具区分性的动作分类。在大规模且困难的细粒度MPII烹饪操作数据集上进行了广泛的实验。结果表明,通过有效地将局部语义信息积累到动作表示和分类流水线中,与现有方法相比,我们可以显着提高细粒度的动作分类性能。

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