认识日常生活活动时的卫生行为推断

U. Naeem, A. H. Tawil, Ivans Semelis, G. Judah, R. Aunger
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引用次数: 0

摘要

许多健康问题通常是在进行日常生活活动(ADL)时发生的不健康行为造成的,例如不良使用环境卫生和个人卫生。本文描述了一种能够识别自然卫生行为模式的ADL推理引擎的开发。与传统的ADL分类方法相反,开发的推理引擎采用了一种新的层次结构来建模、表示和识别ADL、其相关任务、对象、依赖项及其关系。在上下文结构中组织这些信息在执行稳健的ADL识别以检测卫生行为方面起着关键作用。提出的工作也标志着特征检测方法的转变,因为它允许在实际家庭的自然环境中研究实际行为,每个家庭至少有两个个体,而不是基于实验室的受控环境。本文还给出了验证推理引擎性能的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inference of Hygiene Behaviours While Recognising Activities of Daily Living
Many health problems are generally caused by unhealthy behaviours that occur whilst conducting everyday Activities of Daily Living (ADL), such as poor use of sanitation and hygiene. This paper describes the development of an ADL inference engine, which is able to recognise natural hygiene behaviour patterns. As opposed to traditional ADL classification approaches, the developed inference engine employs a novel hierarchal structure for the modelling, representation and recognition of the ADLs, its associated tasks, objects, dependencies and their relationships. The organisation of this information in a contextual structure plays a key role in carrying out robust ADL recognition for the detection of hygiene behaviours. The proposed work also marks a shift in feature detection methodology, as it allows actual behaviour to be studied in its natural environment within actual households, with at least two individuals per household as opposed to a laboratory based controlled setting. This paper also presents experimental results that validate the performance of the inference engine.
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