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Learning a similarity metric discriminatively for pose exemplar based action recognition

机译:区别学习相似度用于基于姿势样例的动作识别

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Exemplar-based action recognition has the advantages of being compact and time-invariant. But how to select suitable exemplars and measure the pose similarities between frames and exemplars are no easy tasks. In this paper, we propose an approach to efficiently select pose exemplars and learn a pose similarity metric between frames and pose exemplars. First, a subset of training frames is mapped into pose space, where clustering is performed to select pose exemplars. Second, a pose similarity metric between frames and pose exemplars is learned based on exemplar classifiers. Finally, both training and testing videos are embedded into a space defined by similarities to pose exemplars, where action classifiers are trained to recognize actions from videos. To test our method, we have used a publicly available dataset which demonstrates that , using very simple features and fewer exemplars, our method can achieve the same or better recognition rate as the state-of-the-art methods.
机译:基于示例的动作识别具有紧凑和时不变的优点。但是,如何选择合适的示例并测量框架和示例之间的姿势相似性并非易事。在本文中,我们提出了一种有效地选择姿势样例并学习框架与姿势样例之间的姿势相似度的方法。首先,将训练帧的子集映射到姿势空间,在其中进行聚类以选择姿势示例。其次,基于示例分类器,学习帧和姿态示例之间的姿态相似性度量。最后,培训和测试视频都被嵌入到一个由相似性定义的空间中,以构成示例,在该空间中,对动作分类器进行了训练,以识别视频中的动作。为了测试我们的方法,我们使用了一个公开可用的数据集,该数据集证明,使用非常简单的功能和更少的示例,我们的方法可以实现与最新方法相同或更高的识别率。

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