可穿戴运动监测系统功率优化的机会分层分类

Francesco Fraternali, Mahsan Rofouei, N. Alshurafa, Hassan Ghasemzadeh, L. Benini, M. Sarrafzadeh
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引用次数: 9

摘要

患者监测系统在准确诊断和治疗日益增长的全球慢性疾病,特别是肥胖流行病方面变得越来越重要。无处不在的可穿戴传感器,如智能手机中随时可用的嵌入式加速度计,为医生提供了远程监控患者日常活动的机会。在使用可穿戴传感器的活动识别领域已经取得了一些进展。然而,由于功率限制,为了在消耗最小能量的情况下执行准确的实时活动识别,需要资源高效的算法。在本文中,我们提出了一个两层架构来优化这类系统的功耗。虽然第一层依赖于分层分类方法,但第二层管理分类系统的激活和停用。我们使用一系列二进制支持向量机分类器来证明这一点。然而,提出的方法是独立于分类器的。实验对象进行不同的日常活动,如走路、上楼下楼、站立和坐着,我们的方法实现了87%的节能,同时保持了92%的分类准确率。
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Opportunistic hierarchical classification for power optimization in wearable movement monitoring systems
Patient monitoring systems are becoming increasingly important in accurately diagnosing and treating growing worldwide chronic conditions especially the obesity epidemic. The ubiquitous nature of wearable sensors, such as the readily available embedded accelerometers in smart phones, provides physicians with an opportunity to remotely monitor their patient's daily activity. There have been several developments in the area of activity recognition using wearable sensors. However, due to power constraints, resource efficient algorithms are necessary in order to perform accurate realtime activity recognition while consuming minimal energy. In this paper, we present a two-tier architecture for optimizing power consumption in such systems. While the first tier relies on a hierarchical classification approach, the second one manages the activation and deactivation of the classification system. We demonstrate this using a series of binary Support Vector Machine classifiers. The proposed approach, however, is classifier independent. Experimenting with subjects performing different daily activities such as walking, going upstairs and down-stairs, standing and sitting, our approach achieves a power savings of 87%, while maintaining 92% classification accuracy.
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