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Occupant behavior monitoring and emergency event detection in single-person households using deep learning-based sound recognition

机译:使用深度学习的声音识别,单人家庭中的占用行为监测和紧急事件检测

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The number of single-person households (SPHs) has been consistently increasing owing to various social issues, such as separation by death, declining marriage rate, and increasing divorce rate. Unfortunately, this demographical change is creating a new social problem, namely, lonely death. In response to this problem, many researchers have attempted to develop wearable sensor-based and computer vision-based systems that monitor occupant behaviors and detect possible emergency events in indoor environments. However, existing approaches face challenges in monitoring SPHs owing to their technical disadvantages; for instance, if the occupant is not wearing the electronic sensor, or if the signal is occluded by other objects, it is not possible to monitor SPHs. Moreover, as existing studies focus only on classifying the occupant's daily activities, such as eating, sitting, and talking, the emergency events that are significant for SPH monitoring are still unclear. To address these challenges, this study investigates emergency events that have a critical impact on the occupant's health and proposes a deep learning-based sound recognition model to monitor occupant behaviors and detect possible emergency events in SPH environments. Experiments are conducted using audio data collected from actual SPH home environments and online data-sharing websites. The average precision and recall rates of the developed model are 78.0% and 90.8%, respectively. The results demonstrate that the developed model could successfully distinguish emergency sound events from the sounds of regular human activities. The findings can not only secure and rescue SPHs in danger but also provide new research directions for indoor occupant and event monitoring.
机译:由于各种社会问题,单人家庭(SPHS)的数量一直在持续增加,例如死亡,婚姻率下降,增加离婚率。不幸的是,这个人口统计变化正在创造一个新的社会问题,即孤独的死亡。在响应这个问题,许多研究人员试图开发基于可穿戴的传感器和基于计算机视觉的系统,该系统监控乘员行为并检测室内环境中可能的紧急事件。然而,由于其技术缺点,现有方法面临监测SPH的挑战;例如,如果乘员未佩戴电子传感器,或者如果信号被其他对象遮挡,则无法监视SPH。此外,由于现有研究仅关注占用乘员的日常活动,例如进食,坐着和谈话,因此SPH监测的重要事件仍然不明确。为了解决这些挑战,本研究调查了对乘员健康产生严重影响的紧急事件,并提出了一种深入的基于学习的声音识别模型,以监控占用行为,并在SPH环境中检测可能的紧急事件。使用从实际SPH家庭环境和在线数据共享网站收集的音频数据进行实验。开发模型的平均精度和召回率分别为78.0%和90.8%。结果表明,开发的模型可以成功地区分应急声音事件从普通人类活动的声音。这些发现不仅可以在危险中确保和挽救SPH,而且还为室内占用和活动监测提供了新的研究方向。

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