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Multisensor Data Fusion and Belief Functions for Robust Singularity Detection in Signals

机译:用于信号稳健奇异性检测的多传感器数据融合和信仰功能

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This paper addresses the problem of robust detection of signal singularity in hostile environments using multisensor data fusion. Measurement uncertainty is usually treated in a probabilistic way, assuming lack of knowledge is totally due to random effects. However, this approach fails when other effects, such as sensor failure, are involved. In order to improve the robustness of singularity detection, an evidence theory based approach is proposed for both modeling (data alignment) and merging (data fusion) information coming from multiple redundant sensors. Whereas the fusion step is done classically, the proposed method for data alignment has been designed to improve singularity detection performances in multisensor cases. Several case studies have been designed to suit real life situations. Results provided by both probabilistic and evidential approaches are compared. Evidential methods show better behavior facing sensors dysfunction and the proposed method takes fully advantage of component redundancy.
机译:本文通过多传感器数据融合解决了敌对环境中信号奇异性的强大检测问题。测量不确定性通常以概率的方式处理,假设缺乏知识是由于随机效应的完全。但是,当涉及其他效果(例如传感器故障)时,这种方法发生故障。为了提高奇点检测的稳健性,提出了一种基于证据理论的方法,用于来自多个冗余传感器的建模(数据对准)和合并(数据融合)信息。虽然融合步骤是经典的,但是已经设计了用于数据对准的提出方法,以改善多传感器案例中的奇点检测性能。旨在适合现实生活的几种案例研究。比较了概率和证据方法提供的结果。证据方法显示出面临传感器功能障碍的更好行为,并且该方法完全优势了组件冗余。

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