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A Bayesian framework with auxiliary particle filter for GMTI based ground vehicle tracking aided by domain knowledge

机译:基于领域知识的基于GMTI的地面车辆跟踪的带辅助粒子滤波的贝叶斯框架

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摘要

In this work, we propose a new ground moving target indicator (GMTI) radar based ground vehicle tracking method which exploits domain knowledge. Multiple state models are considered and a Monte-Carlo sampling based algorithm is preferred due to the manoeuvring of the ground vehicle and the non-linearity of the GMTI measurement model. Unlike the commonly used algorithms such as the interacting multiple model particle filter (IMMPF) and bootstrap multiple model particle filter (BS-MMPF), we propose a new algorithm integrating the more efficient auxiliary particle filter (APF) into a Bayesian framework. Moreover, since the movement of the ground vehicle is likely to be constrained by the road, this information is taken as the domain knowledge and applied together with the tracking algorithm for improving the tracking performance. Simulations are presented to show the advantages of both the new algorithm and incorporation of the road information by evaluating the root mean square error (RMSE).
机译:在这项工作中,我们提出了一种新的基于地面运动目标指示器(GMTI)雷达的地面车辆跟踪方法,该方法利用了领域知识。考虑到多状态模型,并且由于地面车辆的机动性和GMTI测量模型的非线性,基于蒙特卡洛采样的算法是首选。与常用的算法(如交互多模型粒子过滤器(IMMPF)和自举多模型粒子过滤器(BS-MMPF))不同,我们提出了一种将更有效的辅助粒子过滤器(APF)集成到贝叶斯框架中的新算法。此外,由于地面车辆的移动很可能受到道路的限制,因此将该信息作为领域知识,并与跟踪算法一起应用以改善跟踪性能。仿真通过评估均方根误差(RMSE)来展示新算法和合并道路信息的优势。

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