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Human Action Recognition Based on 3D Human Modeling and Cyclic HMMs

机译:基于3D人类建模和循环HMMS的人类行动识别

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Human action recognition is used in areas such as surveillance, entertainment, and healthcare. This paper proposes a system to recognize both single and continuous human actions from monocular video sequences, based on 3D human modeling and cyclic hidden Markov models (CHMMs). First, for each frame in a monocular video sequence, the 3D coordinates of joints belonging to a human object, through actions of multiple cycles, are extracted using 3D human modeling techniques. The 3D coordinates are then converted into a set of geometrical relational features (GRFs) for dimensionality reduction and discrimination increase. For further dimensionality reduction, k-means clustering is applied to the GRFs to generate clustered feature vectors. These vectors are used to train CHMMs separately for different types of actions, based on the Baum–Welch re-estimation algorithm. For recognition of continuous actions that are concatenated from several distinct types of actions, a designed graphical model is used to systematically concatenate different separately trained CHMMs. The experimental results show the effective performance of our proposed system in both single and continuous action recognition problems.
机译:人体行动识别用于监视,娱乐和医疗保健等领域。本文提出了一种基于3D人类建模和循环隐马尔可夫模型(CHMMS)来识别单目一象视频序列的单目和连续人类行动的系统。首先,对于单眼视频序列中的每个帧,使用三维人类建模技术提取通过多个循环的动作来提取属于人体对象的关节的3D坐标。然后将3D坐标转换成一组几何关系特征(GRF)以进行维度降低和判别增加。为了进一步减少维度,将K-Means聚类应用于GRF以生成聚类特征向量。这些向量用于基于BAUM-Welch重新估计算法分别为不同类型的动作分别训练CHMM。为了识别从几种不同类型的动作连接的连续动作,设计的图形模型用于系统地连接不同训练的CHMM。实验结果表明,我们在单一和持续行动识别问题中提出了我们所提出的系统的有效性能。

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