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An Apriori-like algorithm for automatic extraction of the common action characteristics

机译:一种用于自动提取常见动作特性的类似算法

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With the development of the technology like 3D specialized markers, we could capture the moving signals from marker joints and create a huge set of 3D action MoCap data. The more we understand the human action, the better we could apply it to applications like security, analysis of sports, game etc. In order to find the semantically representative features of human actions, we extract the sets of action characteristics which appear frequently in the database. We then propose an Apriori-like algorithm to automatically extract the common sets shared by different action classes. The extracted representative action characteristics are defined in the semantic level, so that it better describes the intrinsic differences between various actions. In our experiments, we show that the knowledge extracted by this method achieves high accuracy of over 80% in recognizing actions on both training and testing data.
机译:随着3D专业标记等技术的开发,我们可以捕获来自标记接头的移动信号,并创建一组大量的3D动作Mocap数据。我们越了解人类行为,我们可以更好地将其应用于安全,体育,游戏等的应用程序,分析等。为了找到人类行为的语义代表特征,我们提取了经常出现的动作特征集数据库。然后,我们提出了一种类似Apriori的算法来自动提取不同动作类共享的公共集。提取的代表性动作特征在语义水平中定义,因此它更好地描述了各种动作之间的内在差异。在我们的实验中,我们表明该方法提取的知识在识别训练和测试数据方面的动作方面实现了高精度超过80%。

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