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An Interaction-Embedded HMM Framework for Human Behavior Understanding: With Nursing Environments as Examples

机译:用于人类行为理解的交互嵌入HMM框架:以护理环境为例

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This paper presents an interaction-embedded hidden Markov model (IE-HMM) framework for automatically detecting and classifying individual human behaviors and group interactions. The proposed framework comprises a switch control (SC) module, an individual duration HMM (IDHMM) module, and an interaction-coupled duration HMM (ICDHMM) module. By analyzing the relative distances between the various participants in each scene, and monitoring the duration for which these distances are maintained, the SC module assigns each participant to an individual behavior unit (comprising a single participant) or an interaction behavior unit (comprising two or more participants). The individual behavior units are passed to the IDHMM module, which classifies the corresponding human behavior in accordance with the pose, motion, and duration information using duration HMM (DHMM). Similarly, the interaction behavior units are dispatched to the ICDHMM module, where the corresponding interaction mode is classified using an integrated scheme comprising multiple coupled-duration HMM (CDHMM), in which each state has an embedded coupled HMM (CHMM). The validity of the IE-HMM framework is confirmed by analyzing the human actions and interactions observed in a nursing home environment. The results confirm that the atomic behavior unit concept embedded in the SC module enables the IE-HMM framework to recognize multiple concurrent actions and interactions within a single scene. Overall, it is shown that the proposed framework has a recognition performance of 100% when applied to the analysis of individual human actions and 95% when applied to that of group interactions.
机译:本文提出了一种交互嵌入的隐马尔可夫模型(IE-HMM)框架,用于自动检测和分类个人的人类行为和群体交互。所提出的框架包括开关控制(SC)模块,单独持续时间HMM(IDHMM)模块和交互耦合持续时间HMM(ICDHMM)模块。通过分析每个场景中各个参与者之间的相对距离,并监视保持这些距离的持续时间,SC模块将每个参与者分配给一个单独的行为单元(包括一个参与者)或一个交互行为单元(包括两个或两个参与者)。更多参与者)。各个行为单位被传递到IDHMM模块,该模块使用持续时间HMM(DHMM)根据姿势,运动和持续时间信息对相应的人类行为进行分类。类似地,将交互行为单元调度到ICDHMM模块,在其中使用包括多个耦合持续时间HMM(CDHMM)的集成方案对相应的交互模式进行分类,其中每个状态都具有嵌入式耦合HMM(CHMM)。 IE-HMM框架的有效性通过分析在养老院环境中观察到的人类行为和相互作用来确认。结果证实,嵌入在SC模块中的原子行为单元概念使IE-HMM框架能够识别单个场景内的多个并发动作和交互。总体而言,结果表明,所提出的框架应用于个人行为分析时的识别性能为100%,应用于群体互动时的识别性能为95%。

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