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Improved GGIW-PHD filter for maneuvering non-ellipsoidal extended targets or group targets tracking based on sub-random matrices

机译:改进的GGIW-PHD滤波器,用于基于子随机矩阵操纵非椭圆形扩展目标或组目标跟踪

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摘要

For non-ellipsoidal extended targets and group targets tracking (NETT and NGTT), using an ellipsoid to approximate the target extension may not be accurate enough because of the lack of shape and orientation information. In consideration of this, we model a non-ellipsoidal extended target or target group as a combination of multiple ellipsoidal sub-objects, each represented by a random matrix. Based on these models, an improved gamma Gaussian inverse Wishart probability hypothesis density (GGIW-PHD) filter is proposed to estimate the measurement rates, kinematic states, and extension states of the sub-objects for each extended target or target group. For maneuvering NETT and NGTT, a multi-model (MM) approach based GGIW-PHD (MM-GGIW-PHD) filter is proposed. The common and the individual dynamics of the sub-objects belonging to the same extended target or target group are described by means of the combination between the overall maneuver model and the sub-object models. For the merging of updating components, an improved merging criterion and a new merging method are derived. A specific implementation of prediction partition with pseudo-likelihood method is presented. Two scenarios for non-maneuvering and maneuvering NETT and NGTT are simulated. The results demonstrate the effectiveness of the proposed algorithms.
机译:对于非椭圆形扩展目标和组目标跟踪(NETT和NGTT),由于缺少形状和方向信息,使用椭圆形近似目标扩展可能不够准确。考虑到这一点,我们将非椭圆形扩展目标或目标组建模为多个椭圆形子对象的组合,每个子对象由一个随机矩阵表示。基于这些模型,提出了一种改进的伽马高斯逆维沙特概率假设密度(GGIW-PHD)滤波器,以估计每个扩展目标或目标组的子对象的测量速率,运动状态和扩展状态。为了操纵NETT和NGTT,提出了一种基于多模型(MM)方法的GGIW-PHD(MM-GGIW-PHD)滤波器。属于同一扩展目标或目标组的子对象的共同动力学和个体动力学是通过整体操纵模型和子对象模型之间的组合来描述的。对于更新组件的合并,推导了一种改进的合并准则和一种新的合并方法。提出了一种用伪似然法进行预测划分的具体实现方法。模拟了非机动和机动NETT和NGTT的两种情况。结果证明了所提出算法的有效性。

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