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Elderly Mobility and Daily Routine Analysis Based on Behavior-Aware Flow Graph Modeling

机译:基于行为感知流程图建模的老年移动和日常常规分析

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With the advent of ubiquitous computing and sensor technologies, indoor trajectory data of individuals can readily be collected to support analysis of their underlying movement behaviors. Different methods for activity recognition have been proposed where supervised learning algorithms are often adopted. In many applications like elderly care, the behaviors to be characterized are often not known in a priori and the behaviors of different individuals cannot be assumed similar even for the same activity type. In this paper, we propose an unsupervised learning methodology to first extract from the trajectory data of an individual behavioral patterns as representations of his/her daily activities, and then infer the patterns' occurrence per day for daily routine analysis. Extracting behavioral patterns is challenging as the patterns often carry long-range dependency and appear with spatio-temporal variations, making the conventional frequent pattern mining approach not suitable. We propose to model the trajectory data using a behavior-aware flow graph which is a probabilistic finite state automaton where the nodes and edges are attributed with local behavioral features. We then apply the weighted kernel k-means algorithm to the flow graph to identify sub flows as the behavioral patterns, followed by non-negative matrix factorization to compute the daily routine patterns. To evaluate the effectiveness of the proposed approach, we applied it to a publicly available data set that contains trajectories of an elder living in a smart home for 219 days. With reference to the ground truth, our experimental results show that the proposed flow graph allows more accurate activity-specific behavioral patterns to be extracted as compared to a frequent pattern clustering approach. Also, we illustrate how the proposed method can be used to support daily routine analysis.
机译:用普适计算和传感器技术的出现,个人室内轨迹数据可以很容易地收集到它们的底层运动行为的支持分析。已经提出了动作识别不同的方法,其中监督学习算法常采用。在许多应用,如老人护理,被定性行为往往不是先验已知和不同个体的行为不能假定即使是相同的活动类型相似。在本文中,我们提出了从个体行为模式的轨迹数据的无监督学习方法,首先提取他/她的日常活动的陈述,然后推断模式每天发生的日常分析。提取行为模式是具有挑战性的图案经常携带远程依赖和与时空变化出现,使得传统的频繁模式挖掘方法不适合的。我们建议使用行为感知流图是在节点和边都归结与当地行为特征概率有限状态自动机轨迹数据模型。然后,我们应用加权核K-means算法的流图来识别子流的行为模式,接着非负矩阵因子分解来计算日常模式。为了评估该方法的有效性,我们将其运用到包含在智能家居的219天长辈的生活轨迹的公开数据集。参照地面真相,我们的实验结果表明,该流程图允许比频繁模式聚类的方法来提取特定活动的更准确的行为模式。此外,我们说明如何,该方法可用于支持日常分析。

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