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Reduced state estimators for consistent tracking of maneuvering targets

机译:减少状态估计器,以持续跟踪机动目标

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摘要

Linear Kalman filters, using fewer states than required to completely specify target maneuvers, are commonly used to track maneuvering targets. Such reduced state Kalman filters have also been used as component filters of interacting multiple model (IMM) estimators. These reduced state Kalman filters rely on white plant noise to compensate for not knowing the maneuver - they are not necessarily optimal reduced state estimators nor are they necessarily consistent. To be consistent, the state estimation and innovation covariances must include the actual errors during a maneuver. Blair and Bar-Shalom have shown an example where a linear Kalman filter used as an inconsistent reduced state estimator paradoxically yields worse errors with multisensor tracking than with single sensor tracking. We provide examples showing multiple facets of Kalman filter and IMM inconsistency when tracking maneuvering targets with single and multiple sensors. An optimal reduced state estimator derived in previous work resolves the consistency issues of linear Kalman filters and IMM estimators.
机译:线性卡尔曼滤波器使用的状态少于完全指定目标机动所需的状态,通常用于跟踪机动目标。这种减少状态的卡尔曼滤波器也已经用作交互多模型(IMM)估计器的分量滤波器。这些减少状态的卡尔曼滤波器依靠白厂噪声来补偿不知道的操作-它们不一定是最佳的减少状态估计量,也不一定是一致的。为了保持一致,状态估计和创新协方差必须包括操纵过程中的实际误差。 Blair和Bar-Shalom展示了一个示例,其中线性卡尔曼滤波器用作不一致的简化状态估计器,与单传感器跟踪相比,多传感器跟踪产生的误差更严重。我们提供的示例显示了在使用单个和多个传感器跟踪机动目标时,卡尔曼滤波器和IMM不一致的多个方面。在先前的工作中得出的最佳简化状态估计器解决了线性卡尔曼滤波器和IMM估计器的一致性问题。

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