A Bayesian analysis of surveillance attribute data

D. Atkinson
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Abstract

Surveillance system sensors generally provide information on location and on other attributes of the object detected. This additional attribute data can be employed in associating a given report with a set of previous reports in the data base (track) thought to represent a single object. The present Bayesian analysis of the association probabilities, arising from such attribute data goes beyond previous treatments in three ways. First, explicit allowance is made for four different types of attribute parameters encountered in many multi-sensor systems. The second distinguishing feature of this scheme is the explicit consideration of uncertainties in report parameters due to errors and deception, and of uncertainties in track parameters due both to these causes and to association probabilities less than unity. Finally, an inference procedure, based on conditional prior probabilities, is developed to treat cases where there is limited overlap between report and track attribute sets. This situation is frequently encountered in multi-sensor systems.
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监测属性数据的贝叶斯分析
监视系统传感器通常提供被探测物体的位置和其他属性信息。这个附加的属性数据可以用于将给定的报表与数据库(轨迹)中的一组先前的报表关联起来,这些报表被认为表示单个对象。从这些属性数据中产生的关联概率的贝叶斯分析在三个方面超越了以前的处理。首先,对许多多传感器系统中遇到的四种不同类型的属性参数进行了明确的考虑。该方案的第二个显著特征是明确考虑了由于错误和欺骗而导致的报告参数中的不确定性,以及由于这些原因和小于统一的关联概率而导致的跟踪参数中的不确定性。最后,开发了一个基于条件先验概率的推理过程来处理报告和跟踪属性集之间有限重叠的情况。这种情况在多传感器系统中经常遇到。
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