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Hierarchical pose estimation for human gait analysis

机译:用于步态分析的分层姿势估计

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摘要

Articulated structures like the human body have many degrees of freedom. This makes an evaluation of the configuration's likelihood very challenging. In this work we propose new linked hierarchical graphical models which are able to efficiently evaluate likelihoods of articulated structures by sharing visual primitives. Instead of evaluating all configurations of the human body separately we take advantage of the fact that different configurations of the human body share body parts, and body parts, in turn, share visual primitives. A hierarchical Markov random field is used to integrate the sharing of visual primitives in a probabilistic framework. We propose a scalable hierarchical representation of the human body and show that this representation is especially well suited for human gait analysis from a frontal camera perspective. Furthermore, the results of the evaluation on a gait dataset show that sharing primitives substantially accelerates the evaluation and that our hierarchical probabilistic framework is a robust method for scalable detection of the human body.
机译:诸如人体的铰接结构具有许多自由度。这使得对配置可能性的评估非常具有挑战性。在这项工作中,我们提出了新的链接层次图形模型,该模型能够通过共享视觉图元来有效评估铰接结构的可能性。代替单独评估人体的所有配置,我们利用以下事实:人体的不同配置共享身体部位,而身体部位又共享视觉图元。分层的马尔可夫随机字段用于在概率框架中集成可视图元的共享。我们提出了一种可缩放的人体分层表示法,并表明这种表示法特别适合从额角相机角度进行人体步态分析。此外,对步态数据集的评估结果表明,共享基元可大大加快评估速度,并且我们的分层概率框架是用于可伸缩检测人体的可靠方法。

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