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Passive wireless sensing for unsupervised human activity recognition in healthcare

机译:被动无线感应技术可在医疗保健中无监督地识别人类活动

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Physical activity classification is an important tool for various applications such as activity of daily living (ADL) recognition and fall detection. Additionally, the non-contact nature of radar systems provides minimally invasive sensing platform. Doppler-based radar has been used for activity classification in the past. However, most of these studies considered supervised classification which requires labeled training data sets. In this paper, we propose a novel procedure of using micro Doppler radar for unsupervised classification with Hidden Markov Models (HMM). A low-complexity time alignment method for capturing activity is developed and an Elbow test has been adopted for model selection. Test results confirm the efficacy of the selected feature set and the proposed methodology. The results prove the proposed system can deliver a very good performance in ADL recognition tasks.
机译:体育活动分类是用于各种应用程序的重要工具,例如日常生活活动(ADL)识别和跌倒检测。此外,雷达系统的非接触性质可提供微创的传感平台。过去,基于多普勒的雷达已用于活动分类。但是,这些研究大多数都考虑了监督分类,这需要标记的训练数据集。在本文中,我们提出了一种使用微多普勒雷达进行隐马尔可夫模型(HMM)的无监督分类的新方法。开发了一种用于捕获活动的低复杂度时间对齐方法,并已采用Elbow测试进行模型选择。测试结果证实了所选功能集和所提出方法的功效。结果证明了所提出的系统在ADL识别任务中可以提供很好的性能。

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