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Human home daily living activities recognition based on a LabVIEW implemented hidden Markov model

机译:人为家庭日常生活活动识别基于LabVIEW实施的隐藏马尔可夫模型

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摘要

The recognition of human daily living activities within a house represents an efficient tool to model its power consumption and is also a good indicator for monitoring the health status of the inhabitants. The problematic of activities recognition in smart homes has been extensively addressed in several studies. In this paper, we present an original interactive tool developed under LabVIEW environment with a graphical user interface allowing the modeling of the daily living activities, based on a machine learning Hidden Markov Model. After an overview of the advantage for the consideration of this model in current human activities, we examine how the associated scientific problematic can find an interest and a solution by the integration of machine learning tools. Thus, the application based on a Hidden Markov model approach, is presented and evaluated using two sets of experimental data from literature. Comparing with results obtained by other daily living activities recognition methods, we point out the very satisfactory recognition performance of the Hidden Markov Model and the likelihood of our development associated to a user-friendly graphical interface. This work opens the way to applications dedicated to the supervision of human daily living activities and / or to the management of the electrical consumption within a smart home equipped with non-intrusive sensors.
机译:在房屋内的人类日常生活活动的认可是建模其功耗的有效工具,也是监测居民的健康状况的良好指标。在几项研究中,智能家居活动中的活动认可问题已被广泛解决。在本文中,我们提出了一个在LabVIEW环境下开发的原始交互式工具,图形用户界面允许基于机器学习隐藏的Markov模型建模日常生活活动。在概述当前人类活动中考虑这种模型的优势之后,我们研究了相关的科学问题如何通过整合机器学习工具来找到兴趣和解决方案。因此,使用来自文献的两组实验数据来呈现和评估基于隐马尔可夫模型方法的应用。与其他日常生活活动识别方法获得的结果相比,我们指出了隐藏马尔可夫模型的非常令人满意的识别性能以及与我们与用户友好的图形界面相关的发展的可能性。这项工作开辟了致力于监督人类日常生活活动的应用程序和/或在配备非侵入式传感器的智能家居内的电气消耗管理。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2021年第16期|24419-24435|共17页
  • 作者单位

    Univ BLIDA 1 Fac Technol Dept Energies Renouvelables Blida 09000 Algeria|Univ Lorraine LMOPS Lab Mat Opt Photon & Syst EA 4423 F-57070 Metz France|Univ Paris Saclay Cent Supelec LMOPS Lab Mat Opt Photon & Syst F-57070 Metz France;

    Univ Lorraine LMOPS Lab Mat Opt Photon & Syst EA 4423 F-57070 Metz France|Univ Paris Saclay Cent Supelec LMOPS Lab Mat Opt Photon & Syst F-57070 Metz France;

    EPST Ctr Dev Energies Renouvelables CDER Unite Dev Equipements Solaires UDES Bou Ismail 42415 Tipaza Algeria;

    Univ BLIDA 1 Fac Technol Dept Energies Renouvelables Blida 09000 Algeria|Univ Lorraine LMOPS Lab Mat Opt Photon & Syst EA 4423 F-57070 Metz France|Univ Paris Saclay Cent Supelec LMOPS Lab Mat Opt Photon & Syst F-57070 Metz France;

    EPST Ctr Dev Energies Renouvelables CDER Unite Dev Equipements Solaires UDES Bou Ismail 42415 Tipaza Algeria;

    Univ Lorraine LMOPS Lab Mat Opt Photon & Syst EA 4423 F-57070 Metz France|Univ Paris Saclay Cent Supelec LMOPS Lab Mat Opt Photon & Syst F-57070 Metz France;

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

    Daily living activities; HMM; LabVIEW; Machine learning; Sensor data; Smart home;

    机译:日常生活活动;嗯;LabVIEW;机器学习;传感器数据;智能家居;

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