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Dynamic weighted aggregation for normality analysis in intelligent surveillance systems

机译:动态加权聚合,用于智能监控系统中的正常性分析

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摘要

Intelligent surveillance systems should be able to carry out an exhaustive analysis from multi-sensor information according to multiple events of interest in order to classify situations as normal or abnormal. That is why the design of appropriate fusion methods is essential to combine the information from a number of monitored aspects and achieve a reliable interpretation of the environment state. Unfortunately, these systems operate under highly dynamic conditions. A static configuration of the weights that determine the importance of the monitored aspects or events of interest may lead to a high number of false alarms and the ignorance of critical situations. This paper performs a thorough study of different information fusion algorithms and proposes a method for the automatic reweighting of the values that establish the importance of the analyzed events of interest. This online method is flexible enough for adjusting such weights in each monitored situation to address the dynamic nature of real environments. The experiments, which have been conducted in a real urban traffic environment, demonstrate the feasibility of the proposed method.
机译:智能监视系统应能够根据感兴趣的多个事件对多传感器信息进行详尽的分析,以便将情况分类为正常还是异常。这就是为什么设计适当的融合方法对于组合来自多个受监视方面的信息并实现对环境状态的可靠解释至关重要的原因。不幸的是,这些系统在高度动态的条件下运行。权重的静态配置决定了所关注方面或事件的重要性,可能导致大量的误报和严重情况的无知。本文对不同的信息融合算法进行了透彻的研究,并提出了一种自动重新加权值的方法,该值确定了所关注事件的重要性。这种在线方法足够灵活,可以在每个监视的情况下调整此类权重,以解决实际环境的动态性质。在真实的城市交通环境中进行的实验证明了该方法的可行性。

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  • 来源
    《Expert Systems with Application》 |2014年第2期|2008-2022|共15页
  • 作者单位

    School of Engineering, Plaza Manuel Meca 1, 13400, Almaden, Ciudad Real, Oreto Research Group, University of Castilla-la Mancha, Spain;

    School of Computer Science, Paseo de la Universidad 4, 13071, Ciudad Real, Oreto Research Group, University of Castilla-la Mancha, Spain;

    School of Computer Science, Paseo de la Universidad 4, 13071, Ciudad Real, Oreto Research Group, University of Castilla-la Mancha, Spain;

    School of Computer Science, Paseo de la Universidad 4, 13071, Ciudad Real, Oreto Research Group, University of Castilla-la Mancha, Spain;

    School of Computer Science, Paseo de la Universidad 4, 13071, Ciudad Real, Oreto Research Group, University of Castilla-la Mancha, Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Information fusion; Intelligent surveillance systems; Expert systems; Normality analysis; Advanced security;

    机译:信息融合;智能监控系统;专家系统;正态性分析;先进的安全性;

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