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Learning movement patterns of the occupant in smart home environments: an unsupervised learning approach

机译:学习智能家居环境中乘员的运动模式:一种无监督的学习方法

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摘要

In recent years, the concept of smart homes and smart buildings have gradually emerged as mainstream with the development of sensor technology and the introduction of several commercial solutions. As one of the most important aspect of this technical-driven smart home system, learning and recognizing the occupant's routine activities and movement patterns is the foundation of further human behavior understanding and prediction process. In this paper, we propose a decomposition based unsupervised learning approach, which is able to learn the occupant's moving patterns directly from the sensor data without event annotations. It overcomes the limitation suffered by a lot of other supervised learning approaches that sensor data sets with event annotations are not difficult to collect since manually data labeling is not scalable and extremely time consuming. By applying the proposed method on Aruba motion sensor data set, we show that the decomposition based pattern learning method leverages the well-developed Non-negative Matrix Factorization algorithm that it can learn the movement pattern candidates of the occupant very fast, with outputs that can be easily interpreted.
机译:近年来,随着传感器技术的发展和几种商业解决方案的推出,智能家居和智能建筑的概念逐渐成为主流。作为此技术驱动型智能家居系统最重要的方面之一,学习和识别乘员的日常活动和运动方式是进一步了解人类行为和预测过程的基础。在本文中,我们提出了一种基于分解的无监督学习方法,该方法能够直接从传感器数据中学习乘员的运动模式,而无需进行事件注释。它克服了许多其他有监督学习方法的局限性,即带有事件注释的传感器数据集不难收集,因为手动数据标记不具有可伸缩性且非常耗时。通过将所提出的方法应用于Aruba运动传感器数据集,我们证明了基于分解的模式学习方法利用了完善的非负矩阵分解算法,可以非常快速地学习乘员的运动模式候选,并且输出可以容易解释。

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