Cook Diane J
Washington State University, Pullman,WA USA.
IEEE Intell Syst. 2010 Sep 9;2010(99):1. doi: 10.1109/MIS.2010.112.
The data mining and pervasive computing technologies found in smart homes offer unprecedented opportunities for providing context-aware services, including health monitoring and assistance to individuals experiencing difficulties living independently at home. In order to provide these services, smart environment algorithms need to recognize and track activities that people normally perform as part of their daily routines. However, activity recognition has typically involved gathering and labeling large amounts of data in each setting to learn a model for activities in that setting. We hypothesize that generalized models can be learned for common activities that span multiple environment settings and resident types. We describe our approach to learning these models and demonstrate the approach using eleven CASAS datasets collected in seven environments.
智能家居中的数据挖掘和普适计算技术为提供情境感知服务带来了前所未有的机遇,包括健康监测以及为在家中独立生活有困难的个人提供帮助。为了提供这些服务,智能环境算法需要识别和跟踪人们日常通常执行的活动。然而,活动识别通常涉及在每个环境中收集和标记大量数据,以学习该环境中活动的模型。我们假设可以为跨越多个环境设置和居民类型的常见活动学习通用模型。我们描述了学习这些模型的方法,并使用在七个环境中收集的十一个CASAS数据集演示了该方法。