Energy Saving Data Abstraction and Reformation Algorithms for Human Movement Monitoring

Toni, H. Goh, S. Liew
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Abstract

Detecting human movement is an important issue in monitoring and studying human activities especially for elderly and patients. The availability of wireless sensor network eases the monitoring work. Generally, a wireless sensor node for movement detection is embedded with an accelerometer and powered by batteries. The sensor node needs to transmit the sensed data from accelerometer wirelessly to other nodes or directly to a base station. If there are more data to be transmitted, it consumes more energy and thus the batteries drain out more quickly. Thus, an energy saving scheme, called Data Abstraction and Reformation (DAR), is proposed in this paper to reduce data transmission. Through data abstraction, sensor nodes filter out insignificant sensed data but only report those significant to a base station, and with data reformation, the complete data will be reconstructed at the base station with only the received data. We show that with a good selection of data abstraction and data reformation criteria, a movement detecting sensor node will only need to report 10%~30% of the sensed data in order to provide full human movement monitoring at a base station.
面向人体运动监测的节能数据提取与改造算法
人体运动检测是监测和研究人体活动的重要问题,特别是对老年人和病人。无线传感器网络的可用性简化了监控工作。通常,用于运动检测的无线传感器节点嵌入加速度计并由电池供电。传感器节点需要将来自加速度计的感知数据无线传输到其他节点或直接传输到基站。如果有更多的数据要传输,它消耗更多的能量,因此电池耗尽得更快。为此,本文提出了一种减少数据传输的节能方案——数据抽象与重构(DAR)。传感器节点通过数据抽象,过滤掉不重要的感知数据,只将重要的数据报告给基站,通过数据改造,基站只接收到数据就能重构出完整的数据。我们表明,通过选择良好的数据抽象和数据改造标准,运动检测传感器节点只需报告10%~30%的感知数据,即可在基站提供完整的人体运动监测。
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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