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Extended Object Tracking Using Monte Carlo Methods

机译:使用蒙特卡洛方法的扩展对象跟踪

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摘要

This correspondence addresses the problem of tracking extended objects, such as ships or a convoy of vehicles moving in urban environment. Two Monte Carlo techniques for extended object tracking are proposed: an interacting multiple model data augmentation (IMM-DA) algorithm and a modified version of the mixture Kalman filter (MKF) of Chen and Liu , called the mixture Kalman filter modified (MKFm). The data augmentation (DA) technique with finite mixtures estimates the object extent parameters, whereas an interacting multiple model (IMM) filter estimates the kinematic states (position and speed) of the manoeuvring object. Next, the system model is formulated in a partially conditional dynamic linear (PCDL) form. This affords us to propose two latent indicator variables characterizing, respectively, the motion mode and object size. Then, an MKFm is developed with the PCDL model. The IMM-DA and the MKFm performance is compared with a combined IMM-particle filter (IMM-PF) algorithm with respect to accuracy and computational complexity. The most accurate parameter estimates are obtained by the DA algorithm, followed by the MKFm and PF.
机译:该对应关系解决了跟踪扩展对象的问题,例如船只或在城市环境中行驶的车辆护卫队。提出了两种用于扩展对象跟踪的蒙特卡洛技术:交互多模型数据增强(IMM-DA)算法和Chen和Liu的混合卡尔曼滤波器(MKF)的改进版本,称为混合卡尔曼滤波器改进(MKFm)。具有有限混合的数据增强(DA)技术估计对象范围参数,而交互多模型(IMM)过滤器估计机动对象的运动状态(位置和速度)。接下来,以部分条件动态线性(PCDL)形式制定系统模型。这使我们能够提出两个潜在的指标变量,分别表征运动模式和物体尺寸。然后,使用PCDL模型开发MKFm。在准确性和计算复杂性方面,将IMM-DA和MKFm性能与组合式IMM粒子滤波器(IMM-PF)算法进行了比较。最准确的参数估计值是通过DA算法获得的,然后是MKFm和PF。

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