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Probabilistic Learning From Incomplete Data for Recognition of Activities of Daily Living in Smart Homes

机译:从不完整数据中进行概率学习以识别智能家居中的日常生活活动

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摘要

Learning behavioral patterns for activities of daily living in a smart home environment can be challenged by the limited number of training data that may be available. This may be due to the infrequent repetition of routine activities (e.g., once daily), the expense of using observers to label activities, and the intrusion that would be caused by the presence of observers over long time periods. It is important, therefore, to make as much use of any labeled data that are collected, however, incomplete these data may be. In this paper, we propose an algorithm for learning behavioral patterns for multi-inhabitants living in a single smart home environment, by making full use of all limited labeled activities, including incomplete data resulting from unreliable low-level sensors in this environment. Through maximum-likelihood estimation, using Expectation-Maximization, we build a model that captures both environmental uncertainties from sensor readings and user uncertainties, including variations in how individuals carry out activities. Our algorithm outperforms models that cannot handle data incompleteness, with increasing performance gains as incompleteness increases. The approach also enables the impact of particular sensors to be assessed and can thus inform sensor maintenance and deployment.
机译:在可用的培训数据数量有限的情况下,在智能家居环境中学习日常生活活动的行为模式可能会受到挑战。这可能是由于例行活动的重复次数很少(例如每天一次),使用观察员标记活动的开销以及长时间观察员在场造成的入侵。因此,重要的是要尽可能多地利用收集到的所有标记数据,但是这些数据可能不完整。在本文中,我们提出了一种算法,可通过充分利用所有有限的标记活动(包括在此环境中由不可靠的低水平传感器产生的不完整数据)来学习居住在单个智能家居环境中的多居民行为模式的算法。通过最大似然估计(使用Expectation-Maximization),我们建立了一个模型,该模型可以捕获来自传感器读数的环境不确定性和用户不确定性,包括个人执行活动方式的变化。我们的算法优于无法处理数据不完整的模型,并且随着不完整的增加,性能提高也越来越多。该方法还能够评估特定传感器的影响,从而可以告知传感器维护和部署。

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