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Integration of track-to-track fusion into multiple-modely filter

机译:轨道间融合集成到多模滤波器中

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摘要

Surveillance in air traffic control (ATC) uses different kinds of sensors, for instance radar, ADS-B or multi-Iateration sensors (MLAT). These sensors might be either pre-tracked individually or already combined e.g. in an SMGCS tracking system that potentially inhibits the use of Kalman filter based tracking methods in multi-sensor data fusion (MSDF). This paper addresses this particular problem in MSDF for air traffic control. We present a method that aims at combining Kalman based filtering methods with other methods such as covariance intersection on a very deep level. An implementation of this method is integrated into the PHOENIX system developed at DFS [3] and some results will be presented.
机译:空中交通管制(ATC)的监视使用了不同类型的传感器,例如雷达,ADS-B或多饱和度传感器(MLAT)。这些传感器可以单独进行预跟踪,也可以组合使用。 SMGCS跟踪系统中的数据可能会禁止在多传感器数据融合(MSDF)中使用基于卡尔曼滤波器的跟踪方法。本文解决了MSDF中用于空中交通管制的这一特殊问题。我们提出了一种旨在将基于卡尔曼滤波的方法与其他方法(例如协方差交集)相结合的方法。该方法的实现已集成到DFS [3]开发的PHOENIX系统中,并将给出一些结果。

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