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Sway detection in human daily actions using Hidden Markov Models

机译:使用隐马尔可夫模型在人类日常行动中摇探

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This paper proposes a novel method for computer vision-based, marker-less analysis of daily human actions for detecting motion irregularities (sway). Sway occurs due to a temporary loss in balance and is an important indicator of decay in motor skills. One should note that the purpose of the proposed approach is not to recognize the performed activity (which is a controlled variable in our experimental design), but to detect irregularities in the performance of this activity. The proposed motion model is based on population Hidden Markov Models. This model has been trained and tested on a custom-designed database involving multiple daily actions. Experimental results demonstrate its robustness with respect to subject and speed variability in training sequences, as well as its ability to capture sway-type motion irregularities.
机译:本文提出了一种基于计算机视觉的计算机视觉的新方法,对日常人类动作进行了用于检测运动不规则性(摇摆)的计算机视觉分析。由于平衡暂时的损失,摇摆发生,并且是运动技能衰减的重要指标。应该注意,所提出的方法的目的是不识别所表演的活动(在我们的实验设计中是一个受控变量),而是检测在该活动的性能方面的违规行为。所提出的运动模型基于人口隐马尔可夫模型。此模型已在涉及多个日常行动的自定义设计的数据库上进行培训和测试。实验结果表明其对训练序列的主体和速度变异性的鲁棒性,以及其捕获摇摆型运动不规则性的能力。

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