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Enhanced Kalman Filter Algorithm Using the Invariance Principle

机译:基于不变性原理的增强卡尔曼滤波算法

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摘要

Target tracking in multistatic active sonar systems is often limited in shallow-water environments due to the high level of bottom reverberation that produces false detections. Past research has shown that these false alarms may be mitigated when complete knowledge of the environment is available for discrimination, but these methods are not robust to environmental uncertainty. Recent work has demonstrated the existence of a waveguide invariant for active sonar geometries. Since this parameter is independent of specifics of the environment, it may be used when the environment is poorly known. In this paper, the invariance extended Kalman filter (IEKF) is proposed as a new tracking algorithm that incorporates dynamic frequency information in the state vector and uses the invariance relation to improve tracker discrimination. IEKF performance is quantified with both simulated and experimental sonar data and results show that the IEKF tracks the target better than the conventional extended Kalman filter (CEKF) in the presence of false detections.
机译:由于产生错误检测的高水平底部混响,在浅水环境中,多静态有源声纳系统中的目标跟踪通常受到限制。过去的研究表明,当可以完全了解环境以进行区分时,可以减少这些错误警报,但是这些方法对环境不确定性并不可靠。最近的工作已经证明了有源声纳几何形状的波导不变性的存在。由于此参数与环境的具体情况无关,因此可以在环境不太了解时使用它。在本文中,提出了不变性扩展卡尔曼滤波器(IEKF)作为一种新的跟踪算法,该方法将动态频率信息纳入状态向量,并利用不变性关系来改善跟踪器的辨别力。利用仿真和实验声纳数据对IEKF性能进行了量化,结果表明,在存在错误检测的情况下,IEKF的目标跟踪效果优于常规扩展卡尔曼滤波器(CEKF)。

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