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Deco: False data detection and correction framework for participatory sensing

机译:Deco:用于参与式感应的错误数据检测和纠正框架

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Participatory sensing enables to collect a vast amount of data from the crowd by allowing a wide variety of sources to contribute data. However, the openness of participatory sensing exposes the system to malicious and erroneous participations, inevitably resulting in poor data quality. This brings forth the important issues of false data detection and correction in participatory sensing. Furthermore, data collected by participants normally include considerable missing values, which poses challenges for accurate false data detection. In this work, we propose DECO, a general framework to detect false values for participatory sensing in the presence of missing data. By applying a tailored spatio-temporal compressive sensing technique, D E CO is able to accurately detect the false data and estimate both false and missing values for data correction. We validate our design through an experimental case study.
机译:参与式感应通过允许多种来源贡献数据,从而能够从人群中收集大量数据。但是,参与式感应的开放性使系统容易受到恶意和错误的参与,从而不可避免地导致数据质量差。这带来了参与感测中错误数据检测和校正的重要问题。此外,参与者收集的数据通常包括相当大的缺失值,这对准确的错误数据检测提出了挑战。在这项工作中,我们提出了DECO,这是一个在缺少数据的情况下检测参与式感知错误值的通用框架。通过应用量身定制的时空压缩感测技术,D E CO能够准确地检测错误数据,并估计错误值和缺失值以进行数据校正。我们通过实验案例研究来验证我们的设计。

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