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Integrating joint and surface for human action recognition in indoor environments

机译:结合关节和表面以在室内环境中识别人类动作

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Action recognition has a long research history, despite several contributed approaches have been introduced, it remains a challenging task in computer vision. In this paper, we present a uniform fusion framework for action recognition, which integrates not only the local depth cues but also the global depth cues. Firstly, the action recognition task is formulated as the maximize the posterior probability, and then the observation for the original action is decomposed into the sub-observations for each individual feature representation strategy of the original action. For the local depth cues, the joints inside the human skeleton is employed to model the local variation of the human motion. In addition, the normal of the depth surface is utilized as the global cue to capture the holistic structure of the human motion. Rather than using the original feature directly, the support vector machine model learning both the discriminative local cue (i.e., the joint) and the discriminative global cue (i.e., the depth surface), respectively. The presented approach is validated on the famous MSR Daily Activity 3D Dataset. And the experimental results demonstrate that our fusion approach can outperform the baseline approaches.
机译:动作识别的研究历史悠久,尽管已经引入了多种贡献方法,但它仍然是计算机视觉中的一项艰巨任务。在本文中,我们提出了用于动作识别的统一融合框架,该框架不仅集成了局部深度提示,而且还集成了整体深度提示。首先,将动作识别任务表述为最大化后验概率,然后将对原始动作的观察分解为针对原始动作的每个单独特征表示策略的子观测。对于局部深度线索,采用人体骨骼内部的关节来模拟人体运动的局部变化。另外,深度表面的法线被用作全局线索来捕获人类运动的整体结构。支持向量机模型不是直接使用原始特征,而是分别学习区分性局部提示(即关节)和区分性整体提示(即深度表面)。所提出的方法已在著名的MSR Daily Activity 3D数据集上得到验证。实验结果表明,我们的融合方法可以胜过基线方法。

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