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Essential Body-Joint and Atomic Action Detection for Human Activity Recognition Using Longest Common Subsequence Algorithm

机译:使用最长公共子序列算法进行人体活动识别的基本人体关节和原子动作检测

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We present an effective algorithm to detect essential body-joints and their corresponding atomic actions from a series of human activity data for efficient human activity recognition/classification. Our human activity data is captured by a RGB-D camera, i.e. Kinect, where human skeletons are detected and provided by the Kinect SDK. Unique in our approach is the novel encoding that can effectively convert skeleton data into a symbolic sequence representation which allows us to detect the essential atomic actions of different human activities through longest common subsequence extraction. Our experimental results show that, through atomic action detection, we can recognize human activity that consists of complicated actions. In addition, since our approach is 'simple', our human activity recognition algorithm can be performed in real-time.
机译:我们提出了一种有效的算法,可以从一系列人类活动数据中检测基本的人体关节及其相应的原子动作,以进行有效的人类活动识别/分类。我们的人类活动数据由RGB-D相机(即Kinect)捕获,Kinect SDK可检测并提供人体骨骼。在我们的方法中,独特的是新颖的编码,它可以有效地将骨架数据转换为符号序列表示形式,从而使我们能够通过最长的常见子序列提取来检测不同人类活动的基本原子动作。我们的实验结果表明,通过原子动作检测,我们可以识别由复杂动作组成的人类活动。此外,由于我们的方法“简单”,因此我们的人类活动识别算法可以实时执行。

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