Human activity recognition with action primitives

Zsolt L. Husz, A. Wallace, P. Green
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引用次数: 19

Abstract

This paper considers the link between tracking algorithms and high-level human behavioural analysis, introducing the action primitives model that recovers symbolic labels from tracked limb configurations. The model consists of similar short-term actions, action primitives clusters, formed automatically and then labelled by supervised learning. The model allows both short actions and longer activities, either periodic or aperiodic. New labels are added incrementally. We determine the effects of model parameters on the labelling of action primitives using ground truth derived from a motion capture system. We also present a representative example of a labelled video sequence.
基于动作原语的人类活动识别
本文考虑了跟踪算法与高级人类行为分析之间的联系,介绍了从被跟踪肢体配置中恢复符号标签的动作原语模型。该模型由相似的短期动作、动作原语聚类组成,这些动作原语聚类是自动形成的,然后通过监督学习进行标记。该模型既允许短期活动,也允许较长的活动,可以是周期性的,也可以是非周期性的。新标签是增量添加的。我们使用来自动作捕捉系统的地面真实值来确定模型参数对动作原语标记的影响。我们还提出了一个有代表性的标记视频序列的例子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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