Towards enabling probabilistic databases for participatory sensing

Nguyen Quoc Viet Hung, Saket K. Sathe, Chi Thang Duong, K. Aberer
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引用次数: 15

Abstract

Participatory sensing has emerged as a new data collection paradigm, in which humans use their own devices (cell phone accelerometers, cameras, etc.) as sensors. This paradigm enables to collect a huge amount of data from the crowd for world-wide applications, without spending cost to buy dedicated sensors. Despite of this benefit, the data collected from human sensors are inherently uncertain due to no quality guarantee from the participants. Moreover, the participatory sensing data are time series that not only exhibit highly irregular dependencies on time, but also vary from sensor to sensor. To overcome these issues, we study in this paper the problem of creating probabilistic data from given (uncertain) time series collected by participatory sensors. We approach the problem in two steps. In the first step, we generate probabilistic times series from raw time series using a dynamical model from the time series literature. In the second step, we combine probabilistic time series from multiple sensors based on the mutual relationship between the reliability of the sensors and the quality of their data. Through extensive experimentation, we demonstrate the efficiency of our approach on both real data and synthetic data.
实现参与式感知的概率数据库
参与式传感已成为一种新的数据收集范式,其中人类使用自己的设备(手机加速计,相机等)作为传感器。这种模式可以从人群中收集大量数据,用于全球应用,而无需花费成本购买专用传感器。尽管有这些好处,但由于参与者没有质量保证,从人体传感器收集的数据本质上是不确定的。此外,参与式传感数据是时间序列,不仅表现出高度不规则的时间依赖性,而且不同传感器之间也存在差异。为了克服这些问题,本文研究了从参与式传感器收集的给定(不确定)时间序列中创建概率数据的问题。我们分两步处理这个问题。在第一步,我们使用时间序列文献中的动态模型从原始时间序列生成概率时间序列。第二步,基于传感器可靠性与数据质量之间的相互关系,将多个传感器的概率时间序列进行组合。通过大量的实验,我们证明了我们的方法在真实数据和合成数据上的效率。
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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