Multi-level sample importance ranking based progressive transmission strategy for time series body sensor data

Ming Li, Joseph Reeves, Carlos Moreno
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引用次数: 6

Abstract

Body sensors have gained increasing interest during the past several years. With more applications deployed, it is imperative to ensure the success of data analysis, which largely depends on data transmission reliability as well as the importance of samples received. Traditional approaches focus on improving data reliability through various schemes such as prioritization of MAC access. In this paper, we analyzed the characteristics of time series body sensor data and propose to rank sample importance based on a multi-level approach. With this approach, samples are grouped into five levels, indicating their importance with regard to data analysis. Then, a progressive transmission strategy is designed to transmit samples in order of their importance so that the overall received data quality is maximized. Preliminary simulation results indicate that as much as 40-60% bandwidth saving can be achieved while meeting the requirements of data analysis algorithms.
基于多层次样本重要性排序的时间序列人体传感器数据渐进传输策略
在过去的几年里,人体传感器获得了越来越多的兴趣。随着越来越多的应用程序的部署,确保数据分析的成功势在必行,这在很大程度上取决于数据传输的可靠性以及接收到的样本的重要性。传统的方法侧重于通过各种方案(如MAC访问优先级)来提高数据可靠性。本文分析了时间序列人体传感器数据的特点,提出了基于多层次方法的样本重要性排序方法。通过这种方法,样本被分为五个级别,表明它们对数据分析的重要性。然后,设计渐进式传输策略,按其重要性顺序传输样本,从而最大限度地提高接收到的整体数据质量。初步仿真结果表明,在满足数据分析算法要求的情况下,可节省40-60%的带宽。
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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