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Evaluation of Three State-of-the-Art Classifiers for Recognition of Activities of Daily Living from Smart Home Ambient Data

机译:从智能家居环境数据中识别三种最先进的识别日常生活活动的分类器的评估

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Smart homes for the aging population have recently started attracting the attention of the research community. The “health state” of smart homes is comprised of many different levels; starting with the physical health of citizens, it also includes longer-term health norms and outcomes, as well as the arena of positive behavior changes. One of the problems of interest is to monitor the activities of daily living (ADL) of the elderly, aiming at their protection and well-being. For this purpose, we installed passive infrared (PIR) sensors to detect motion in a specific area inside a smart apartment and used them to collect a set of ADL. In a novel approach, we describe a technology that allows the ground truth collected in one smart home to train activity recognition systems for other smart homes. We asked the users to label all instances of all ADL only once and subsequently applied data mining techniques to cluster in-home sensor firings. Each cluster would therefore represent the instances of the same activity. Once the clusters were associated to their corresponding activities, our system was able to recognize future activities. To improve the activity recognition accuracy, our system preprocessed raw sensor data by identifying overlapping activities. To evaluate the recognition performance from a 200-day dataset, we implemented three different active learning classification algorithms and compared their performance: naive Bayesian (NB), support vector machine (SVM) and random forest (RF). Based on our results, the RF classifier recognized activities with an average specificity of 96.53%, a sensitivity of 68.49%, a precision of 74.41% and an F-measure of 71.33%, outperforming both the NB and SVM classifiers. Further clustering markedly improved the results of the RF classifier. An activity recognition system based on PIR sensors in conjunction with a clustering classification approach was able to detect ADL from datasets collected from different homes. Thus, our PIR-based smart home technology could improve care and provide valuable information to better understand the functioning of our societies, as well as to inform both individual and collective action in a smart city scenario.
机译:针对人口老龄化的智能家居最近开始引起研究界的关注。智能家居的“健康状态”由许多不同层次组成。从公民的身体健康开始,它还包括长期健康规范和成果,以及积极行为改变的舞台。感兴趣的问题之一是监视老年人的日常生活,以保护他们的健康。为此,我们安装了被动红外(PIR)传感器来检测智能公寓内特定区域的运动,并使用它们收集一组ADL。在一种新颖的方法中,我们描述了一种技术,该技术允许在一个智能家居中收集的地面事实训练其他智能家居的活动识别系统。我们要求用户仅对所有ADL的所有实例进行一次标记,然后将数据挖掘技术应用于家庭传感器触发的群集。因此,每个群集将代表同一活动的实例。一旦这些集群与其相应的活动相关联,我们的系统便能够识别未来的活动。为了提高活动识别的准确性,我们的系统通过识别重叠的活动来预处理原始传感器数据。为了评估200天数据集的识别性能,我们实施了三种不同的主动学习分类算法,并比较了它们的性能:朴素贝叶斯(NB),支持向量机(SVM)和随机森林(RF)。根据我们的结果,RF分类器以平均特异性96.53%,灵敏度68.49%,精确度74.41%和F测度71.33%识别活性,优于NB和SVM分类器。进一步的聚类显着改善了RF分类器的结果。基于PIR传感器并结合聚类分类方法的活动识别系统能够从从不同房屋收集的数据集中检测ADL。因此,我们基于PIR的智能家居技术可以改善护理并提供有价值的信息,以更好地了解我们的社会运转,并在智能城市场景中为个人和集体行动提供信息。

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