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Recognizing activities of daily living from UWB radars and deep learning

机译:识别来自UWB雷达和深度学习的日常生活活动

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摘要

Since years, the number of seniors increases while, at the same time, we observe a diminution of the potential support ratio. In order to overcome this limitation, solutions emerged, such as smart homes and wearable devices. Smart homes integrate sensors, actuators, and artificial intelligence to assist seniors in their everyday life. One of the objectives is to recognize the activities of everyday life. This recognition aims to provide the right assistance at the right moment and gives some autonomy to seniors. However, it is a complex task (a significant quantity of different sensors, hardware implementation), and the number of solutions (combinations between approaches, for example, video-based HAR and wearable sensors-based HAR) that exist is important. In this paper, we propose to perform the activity recognition from three ultra-wideband (UWB) radars, deep learning models, and a voting system. Also, all the experiments have been conducted in a real apartment and are composed of 15 different activities. The presented solution is simple compared to the literature since we exploit only one type of sensor. Finally, we obtained promising results with our approach. Indeed, the classification rate reaches 90% and more in some cases.
机译:自年以来,老年人的数量增加,同时,我们观察潜在的支撑率的减少。为了克服这种限制,解决方案出现,例如智能家居和可穿戴设备。智能家居将传感器,执行器和人工智能集成,以协助老年人在日常生活中。其中一个目标是认识到日常生活的活动。这种认可旨在在适当的时刻提供正确的援助,并为老年人提供一些自主权。然而,它是一个复杂的任务(大量不同的传感器,硬件实现)和存在的解决方案数量(方法之间的组合,例如,基于视频的RAR和可穿戴传感器的基于传感器的Har)是重要的。在本文中,我们建议从三个超宽带(UWB)雷达,深度学习模型和投票系统中执行活动识别。此外,所有实验已经在真正的公寓中进行,并由15个不同的活动组成。与文献相比,呈现的解决方案简单,因为我们只利用一种类型的传感器。最后,我们通过我们的方法获得了有希望的结果。实际上,在某些情况下,分类率达到90%和更多。

著录项

  • 来源
    《Expert systems with applications》 |2021年第2期|113994.1-113994.13|共13页
  • 作者单位

    Laboratoire d'Intelligence Ambiante pour la Reconnaissance d'Activites Universite du Quebec a Chicoutimi 555 boulevard de l'Universite Chicoutimi G7H2B1 Canada;

    Laboratoire d'Intelligence Ambiante pour la Reconnaissance d'Activites Universite du Quebec a Chicoutimi 555 boulevard de l'Universite Chicoutimi G7H2B1 Canada;

    Laboratoire d'Intelligence Ambiante pour la Reconnaissance d'Activites Universite du Quebec a Chicoutimi 555 boulevard de l'Universite Chicoutimi G7H2B1 Canada;

    Laboratoire d'Intelligence Ambiante pour la Reconnaissance d'Activites Universite du Quebec a Chicoutimi 555 boulevard de l'Universite Chicoutimi G7H2B1 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Everyday activities; Classification; Recognition; UWB radar; Deep learning;

    机译:日常活动;分类;认出;UWB雷达;深度学习;

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