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首页> 外文期刊>The Visual Computer >Silhouette-based human action recognition using SAX-Shapes
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Silhouette-based human action recognition using SAX-Shapes

机译:使用SAX-Shapes的基于轮廓的人体动作识别

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摘要

Human action recognition is an important problem in Computer Vision. Although most of the existing solutions provide good accuracy results, the methods are often overly complex and computationally expensive, hindering practical applications. In this regard, we introduce the combination of time-series representation for the silhouette and Symbolic Aggregate approximation (SAX), which we refer to as SAX-Shapes, to address the problem of human action recognition. Given an action sequence, the extracted silhouettes of an actor from every frame are transformed into time series. Each of these time series is then efficiently converted into the symbolic vector: SAX. The set of all these SAX vectors (SAX-Shape) represents the action. We propose a rotation invariant distance function to be used by a random forest algorithm to perform the human action recognition. Requiring only silhouettes of actors, the proposed method is validated on two public datasets. It has an accuracy comparable to the related works and it performs well even in varying rotation.
机译:人体动作识别是计算机视觉中的重要问题。尽管大多数现有解决方案都提供了良好的精度结果,但是这些方法通常过于复杂且计算量大,从而阻碍了实际应用。在这方面,我们介绍了轮廓的时间序列表示和符号集合近似(SAX)(我们称为SAX形状)的组合,以解决人类动作识别的问题。给定一个动作序列,将从每个帧中提取的演员剪影转换为时间序列。然后,将这些时间序列中的每一个有效地转换为符号向量:SAX。所有这些SAX向量的集合(SAX-Shape)表示动作。我们提出了一个旋转不变距离函数,供随机森林算法用于执行人类动作识别。仅要求演员的身影,该方法在两个公共数据集上得到了验证。它具有可与相关作品相媲美的精度,即使在变化的旋转条件下也表现良好。

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