Roy Nirmalya, Misra Archan, Cook Diane
Department of Information Systems, University of Maryland, Baltimore County, Baltimore, USA.
School of Information Systems, Singapore Management University, Singapore, Singapore.
J Ambient Intell Humaniz Comput. 2016 Feb;7(1):1-19. doi: 10.1007/s12652-015-0294-7. Epub 2015 Jun 27.
Activity recognition in smart environments is an evolving research problem due to the advancement and proliferation of sensing, monitoring and actuation technologies to make it possible for large scale and real deployment. While activities in smart home are interleaved, complex and volatile; the number of inhabitants in the environment is also dynamic. A key challenge in designing robust smart home activity recognition approaches is to exploit the users' spatiotemporal behavior and location, focus on the availability of multitude of devices capable of providing different dimensions of information and fulfill the underpinning needs for scaling the system beyond a single user or a home environment. In this paper, we propose a hybrid approach for recognizing complex activities of daily living (ADL), that lie in between the two extremes of intensive use of body-worn sensors and the use of ambient sensors. Our approach harnesses the power of simple ambient sensors (e.g., motion sensors) to provide additional 'hidden' context (e.g., room-level location) of an individual, and then combines this context with smartphone-based sensing of micro-level postural/locomotive states. The major novelty is our focus on multi-inhabitant environments, where we show how the use of spatiotemporal constraints along with multitude of data sources can be used to significantly improve the accuracy and computational overhead of traditional activity recognition based approaches such as coupled-hidden Markov models. Experimental results on two separate smart home datasets demonstrate that this approach improves the accuracy of complex ADL classification by over 30 %, compared to pure smartphone-based solutions.
由于传感、监测和驱动技术的进步与普及,智能环境中的活动识别成为一个不断发展的研究问题,这使得大规模实际部署成为可能。虽然智能家居中的活动是交错、复杂且多变的,环境中的居住人数也是动态的。设计强大的智能家居活动识别方法的一个关键挑战是利用用户的时空行为和位置,关注能够提供不同信息维度的大量设备的可用性,并满足将系统扩展到单个用户或家庭环境之外的基础需求。在本文中,我们提出了一种混合方法来识别日常生活中的复杂活动(ADL),该方法介于大量使用可穿戴式传感器和使用环境传感器这两种极端情况之间。我们的方法利用简单环境传感器(如运动传感器)的能力来提供个人的额外“隐藏”上下文(如房间级位置),然后将此上下文与基于智能手机的微观姿势/运动状态感知相结合。主要的新颖之处在于我们关注多居住者环境,展示了如何利用时空约束以及大量数据源来显著提高基于传统活动识别方法(如耦合隐马尔可夫模型)的准确性和计算开销。在两个独立的智能家居数据集上的实验结果表明,与纯基于智能手机的解决方案相比,该方法将复杂ADL分类的准确性提高了30%以上。