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用于节能身体活动检测的最佳时间-资源分配

Optimal Time-Resource Allocation for Energy-Efficient Physical Activity Detection.

作者信息

Thatte Gautam, Li Ming, Lee Sangwon, Emken B Adar, Annavaram Murali, Narayanan Shrikanth, Spruijt-Metz Donna, Mitra Urbashi

机构信息

Ming Hseih Department of Electrical Engineering, University of Southern California, Los Angeles, CA 90089 USA (

出版信息

IEEE Trans Signal Process. 2011;59(4):1843-1857. doi: 10.1109/TSP.2010.2104144.

Abstract

The optimal allocation of samples for physical activity detection in a wireless body area network for health-monitoring is considered. The number of biometric samples collected at the mobile device fusion center, from both device-internal and external Bluetooth heterogeneous sensors, is optimized to minimize the transmission power for a fixed number of samples, and to meet a performance requirement defined using the probability of misclassification between multiple hypotheses. A filter-based feature selection method determines an optimal feature set for classification, and a correlated Gaussian model is considered. Using experimental data from overweight adolescent subjects, it is found that allocating a greater proportion of samples to sensors which better discriminate between certain activity levels can result in either a lower probability of error or energy-savings ranging from 18% to 22%, in comparison to equal allocation of samples. The current activity of the subjects and the performance requirements do not significantly affect the optimal allocation, but employing personalized models results in improved energy-efficiency. As the number of samples is an integer, an exhaustive search to determine the optimal allocation is typical, but computationally expensive. To this end, an alternate, continuous-valued vector optimization is derived which yields approximately optimal allocations and can be implemented on the mobile fusion center due to its significantly lower complexity.

摘要

本文考虑了用于健康监测的无线体域网中用于身体活动检测的样本最优分配问题。在移动设备融合中心,对从设备内部和外部蓝牙异构传感器收集的生物特征样本数量进行了优化,以在固定样本数量的情况下最小化传输功率,并满足使用多个假设之间的误分类概率定义的性能要求。一种基于滤波器的特征选择方法确定用于分类的最优特征集,并考虑了相关高斯模型。利用超重青少年受试者的实验数据发现,与样本平均分配相比,将更大比例的样本分配给能更好地区分某些活动水平的传感器,可以降低错误概率或节省18%至22%的能量。受试者当前的活动和性能要求对最优分配没有显著影响,但采用个性化模型可提高能源效率。由于样本数量是整数,通常通过穷举搜索来确定最优分配,但计算成本很高。为此,推导了一种替代的连续值向量优化方法,该方法可产生近似最优分配,并且由于其复杂度显著降低,可以在移动融合中心实现。

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