Context guided and personalized activity classification system

James Y. Xu, Yuwen Sun, Zhao Wang, W. Kaiser, G. Pottie
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引用次数: 16

Abstract

Continued rapid progress in the development of embedded motion sensing enables wearable devices that provide fundamental advances in the capability to monitor and classify human motion, detect movement disorders, and estimate energy expenditure. With this progress, it is becoming possible to provide, for the first time, evaluation of outcomes of rehabilitation interventions and direct guidance for advancement of subject health, wellness, and safety. The progress in motion classification relies on both the performance of new sensor fusion methods that provide inference, and the energy efficiency of energy-constrained monitoring sensors. As will be described here, both of these objectives require advances in the capability of detecting and classifying the location and environmental context. Context directly enables both enhanced motion classification accuracy and speed through reduction in search space, and reduced energy demand through context-aware optimization of sensor sampling and operation schedules. There have been attempts to introduce context awareness into activity monitoring with limited success, due to the ambiguity in the definition of context, and the lack of a system architecture that enables the adaptation of signal processing and sensor fusion algorithms specific to the task of personalized activity monitoring. In this paper we present a novel end-to-end system that provides context guided personalized activity classification. With a refined concept of context, the system introduces interface models that feature a context classification committee, the concept of context specific activity classification, the ability to manage sensors given context, and the ability to operate in real time through web services. We also present an implementation that demonstrates accurate context classification, accurate activity classification using context specific models with improved accuracy and speed, and extended operating life through sensor energy management.
情境引导和个性化的活动分类系统
嵌入式运动传感技术的持续快速发展使可穿戴设备在监测和分类人体运动、检测运动障碍和估计能量消耗方面提供了根本性的进步。随着这一进展,首次有可能对康复干预的结果进行评估,并为促进受试者的健康、健康和安全提供直接指导。运动分类的进展既依赖于提供推理的新型传感器融合方法的性能,也依赖于能量约束监测传感器的能量效率。正如将在这里描述的,这两个目标都需要在探测和分类地点和环境背景的能力方面取得进展。上下文直接通过减少搜索空间来提高运动分类的准确性和速度,并通过传感器采样和操作时间表的上下文感知优化来减少能源需求。由于上下文定义的模糊性,以及缺乏能够适应个性化活动监测任务的信号处理和传感器融合算法的系统架构,已经有人尝试将上下文感知引入活动监测,但收效甚微。在本文中,我们提出了一个新的端到端系统,提供上下文指导的个性化活动分类。通过改进上下文概念,系统引入了接口模型,这些模型具有上下文分类委员会、特定于上下文的活动分类概念、管理给定上下文的传感器的能力以及通过web服务进行实时操作的能力。我们还提出了一个实现,该实现演示了准确的上下文分类,使用特定于上下文的模型进行准确的活动分类,提高了准确性和速度,并通过传感器能量管理延长了操作寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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