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IMM Estimator with Out-of-Sequence Measurements

机译:具有不按序测量的IMM估计器

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摘要

In multisensor tracking systems that operate in a centralized information processing architecture, measurements from the same target obtained by different sensors can arrive at the processing center out of sequence. In order to avoid either a delay in the output or the need for reordering and reprocessing an entire sequence of measurements, such measurements have to be processed as out-of-sequence measurements (OOSM). Recent work developed procedures for incorporating OOSMs into a Kalman filter (KF). Since the state of the art tracker for real (maneuvering) targets is the Interacting Multiple Model (IMM) estimator, this paper presents the algorithm for incorporating OOSMs into an IMM estimator. Both data association and estimation are considered. Simulation results are presented for two realistic problems using measurements from two airborne GMTI sensors. It is shown that the proposed algorithm for incorporating OOSMs into an IMM estimator yields practically the same performance as the reordering and in-sequence reprocessing of the measurements.
机译:在以集中式信息处理体系结构运行的多传感器跟踪系统中,由不同传感器获得的来自同一目标的测量结果可能会不按顺序到达处理中心。为了避免输出中的延迟或避免对整个测量序列进行重新排序和重新处理,此类测量必须作为乱序测量(OOSM)处理。最近的工作开发了将OOSM合并到卡尔曼滤波器(KF)中的过程。由于实际的(机动)目标跟踪器是交互多模型(IMM)估计器,因此本文提出了将OOSM合并到IMM估计器中的算法。数据关联和估计都被考虑。使用两个机载GMTI传感器的测量结果,针对两个现实问题给出了仿真结果。结果表明,所提出的将OOSM合并到IMM估计器中的算法与测量的重新排序和顺序重新处理实际上产生了相同的性能。

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