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Belief state approaches to signaling alarms in surveillance systems

机译:监视系统中发出警报信号的信念状态方法

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Surveillance systems have long been used to monitor industrial processes and are becoming increasingly popular in public health and anti-terrorism applications. Most early detection systems produce a time series of p-values or some other statistic as their output. Typically, the decision to signal an alarm is based on a threshold or other simple algorithm such as CUSUM that accumulates detection information temporally.We formulate a POMDP model of underlying events and observations from a detector. We solve the model and show how it is used for single-output detectors. When dealing with spatio-temporal data, scan statistics are a popular method of building detectors. We describe the use of scan statistics in surveillance and how our POMDP model can be used to perform alarm signaling with them. We compare the results obtained by our method with simple thresholding and CUSUM on synthetic and semi-synthetic health data.
机译:监视系统长期以来一直用于监视工业过程,并在公共卫生和反恐应用中变得越来越流行。大多数早期检测系统会产生p值或其他统计量的时间序列作为其输出。通常,发出警报信号的决定是基于阈值或其他简单的算法(例如CUSUM),该算法会临时累积检测信息。我们制定了一个潜在事件和来自检测器的观测值的POMDP模型。我们对模型进行求解,并说明如何将其用于单输出检测器。在处理时空数据时,扫描统计数据是构建探测器的一种常用方法。我们描述了扫描统计信息在监视中的使用以及如何使用我们的POMDP模型对它们执行警报信号。我们将通过我们的方法获得的结果与简单阈值和CUSUM进行比较,以得出合成和半合成健康数据。

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