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Joint target tracking and classification with particle filtering and mixture Kalman filtering using kinematic radar information

机译:利用运动雷达信息进行粒子滤波和混合卡尔曼滤波的联合目标跟踪和分类

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摘要

This paper considers the problem of joint maneuvering target tracking and classification. Based on recently proposed Monte Carlo techniques, a multiple model (MM) particle filter and a mixture Kalman filter (MKF) are designed for two-class identification of air targets: commercial and military aircraft. The classification task is carried out by processing radar measurements only, no class (feature) measurements are used. A speed likelihood function for each class is defined using a prior information about speed constraints. Class-dependent speed likelihoods are calculated through the state estimates of each class-dependent tracker. They are combined with the kinematic measurement likelihoods in order to improve the classification process. The two designed estimators are compared and evaluated over rather complex target scenarios. The results demonstrate the usefulness of the proposed scheme for the incorporation of additional speed information. Both filters illustrate the opportunity of the particle filtering and mixture Kalman filtering to incorporate constraints in a natural way, providing reliable tracking and correct classification. Future observations contain valuable information about the current state of the dynamic systems. In the framework of the MKF, an algorithm for delayed estimation is designed for improving the current modal state estimate. It is used as an additional, more reliable information in resolving complicated classification situations.
机译:本文考虑了联合机动目标的跟踪和分类问题。基于最近提出的蒙特卡洛技术,设计了多模型(MM)粒子过滤器和混合卡尔曼过滤器(MKF)用于两类空中目标的识别:商用飞机和军用飞机。分类任务仅通过处理雷达测量来执行,不使用类别(特征)测量。使用关于速度约束的先验信息来定义每个类别的速度似然函数。通过每个与类相关的跟踪器的状态估计,可以计算出与类相关的速度可能性。将它们与运动学测量可能性相结合,以改善分类过程。在相当复杂的目标方案上比较和评估了这两个设计的估算器。结果证明了所提出的方案对于合并附加速度信息的有用性。这两个过滤器都说明了粒子过滤和混合卡尔曼过滤以自然方式合并约束的机会,从而提供可靠的跟踪和正确的分类。未来的观察将包含有关动态系统当前状态的有价值的信息。在MKF的框架中,设计了一种延迟估计算法,以改善当前的模态估计。在解决复杂的分类情况时,它用作附加的,更可靠的信息。

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    Angelova, D; Mihaylova, L;

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  • 年度 2006
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