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Human Action Recognition from Inter-temporal Dictionaries of Key-Sequences

机译:从关键序列间的颞次字典的人类行动识别

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This paper addresses the human action recognition in video by proposing a method based on three main processing steps. First, we tackle problems related to intraclass variations and differences in video lengths. We achieve this by reducing an input video to a set of keysequences that represent atomic meaningful acts of each action class. Second, we use sparse coding techniques to learn a representation for each key-sequence. We then join these representations still preserving information about temporal relationships. We believe that this is a key step of our approach because it provides not only a suitable shared representation to characterize atomic acts, but it also encodes global temporal consistency among these acts. Accordingly, we call this representation inter-temporal acts descriptor. Third, we use this representation and sparse coding techniques to classify new videos. Finally, we show that, our approach outperforms several state-of-the-art methods when is tested using common benchmarks.
机译:本文通过提出基于三个主要处理步骤的方法来解决视频中的人类行动识别。首先,我们解决与脑内变化和视频长度差异相关的问题。我们通过将输入视频缩小到代表每个动作类的原子有意义的行为的一组密钥序列来实现这一目标。其次,我们使用稀疏编码技术来学习每个密钥序列的表示。然后,我们加入这些表示仍保留有关时间关系的信息。我们认为这是我们方法的关键步骤,因为它不仅提供了适当的共享表示来表征原子行为,而且还可以在这些行为中编码全球时间一致性。因此,我们称之为临时行为描述符。第三,我们使用此表示和稀疏编码技术来分类新视频。最后,我们表明,当使用常用基准测试时,我们的方法始于几种最先进的方法。

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