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Mining Key Skeleton Poses with Latent SVM for Action Recognition

机译:利用潜在SVM挖掘关键骨架以进行动作识别

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摘要

Human action recognition based on 3D skeleton has become an active research field in recent years with the recently developed commodity depth sensors. Most published methods analyze an entire 3D depth data, construct mid-level part representations, or use trajectory descriptor of spatial-temporal interest point for recognizing human activities. Unlike previous work, a novel and simple action representation is proposed in this paper which models the action as a sequence of inconsecutive and discriminative skeleton poses, named as key skeleton poses. The pairwise relative positions of skeleton joints are used as feature of the skeleton poses which are mined with the aid of the latent support vector machine (latent SVM). The advantage of our method is resisting against intraclass variation such as noise and large nonlinear temporal deformation of human action. We evaluate the proposed approach on three benchmark action datasets captured by Kinect devices: MSR Action 3D dataset, UTKinect Action dataset, and Florence 3D Action dataset. The detailed experimental results demonstrate that the proposed approach achieves superior performance to the state-of-the-art skeleton-based action recognition methods.
机译:近年来,随着最近开发的商品深度传感器,基于3D骨架的人体动作识别已成为活跃的研究领域。大多数已发布的方法会分析整个3D深度数据,构造中层零件表示或使用时空兴趣点的轨迹描述符来识别人类活动。与以前的工作不同,本文提出了一种新颖而简单的动作表示形式,该动作表示动作是一系列不连续和有区别的骨架姿势,称为关键骨架姿势。骨架关节的成对相对位置用作骨架姿态的特征,这些骨架姿态借助潜在支持向量机(latent SVM)进行挖掘。我们方法的优点是可以抵抗类内变化,例如噪声和人类动作的较大非线性时间变形。我们对Kinect设备捕获的三个基准动作数据集评估了建议的方法:MSR动作3D数据集,UTKinect动作数据集和佛罗伦萨3D动作数据集。详细的实验结果表明,与基于骨架的最新动作识别方法相比,该方法具有更好的性能。

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  • 来源
    《Applied computational intelligence and soft computing》 |2017年第2017期|5861435.1-5861435.11|共11页
  • 作者单位

    School of Computer Engineering and Science, Shanghai University, Shanghai, China;

    School of Computer Engineering and Science, Shanghai University, Shanghai, China;

    School of Mathematic and Statistics, Nanyang Normal University, Nanyang, China;

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