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Improved Multi-Bernoulli Filter for Extended Stealth Targets Tracking Based on Sub-Random Matrices

机译:改进的多伯努利滤波器基于次随机矩阵的扩展隐身目标跟踪

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In this paper, we address a radar detection and tracking of multi-stealth targets. Multi-Bernoulli filter is a provable optimal Bayes approach of multi-target filtering and shows excellent performance over the other filters. The original multi-Bernoulli filters rely on the assumption that the interest targets are point source objects. Normally, in realistic scenarios, the point source assumption is not suitable for estimating the extent stealth targets (ESTs) scenarios. Recently, the random matrices approach has been proposed for ellipsoidal extended object tracking by additional state variables. In multiple EST scenarios, although the extension ellipsoid is efficient, it may not be accurate enough because of lacking useful information, such as size, shape, and orientation. To this point, we introduce a non-ellipsoidal EST composed of multiple ellipsoidal sub-objects, and each one is represented by a random matrix. Based on such models, a multi-Bernoulli filter is used to estimate kinematic states and extensions of sub-objects for each EST. However, in multiple EST scenarios, the detection profile is prior unknown due to fluctuation of EST parameters. The parameter, such as detection probability, is of critical importance in this extended filter. To tackle these problems, a beta Gaussian inverse Wishart implementation is proposed to estimate the EST extent augment with unknown detection probability and kinematic state. The results show that the proposed filter has more accurate cardinality estimation and smaller optimal sub-pattern assignment errors than the recently extended probability hypothesis density (PHD) and cardinalized PHD filters.
机译:在本文中,我们解决了雷达探测和跟踪多隐身目标的问题。 Multi-Bernoulli滤波器是一种可证明的多目标滤波的最佳贝叶斯方法,与其他滤波器相比,具有出色的性能。原始的多重Bernoulli过滤器基于兴趣目标是点源对象的假设。通常,在实际情况下,点源假设不适合估计范围隐身目标(EST)情况。最近,已经提出了通过附加状态变量对椭圆形扩展对象进行跟踪的随机矩阵方法。在多个EST方案中,尽管扩展椭球有效,但由于缺少有用的信息(例如大小,形状和方向),它可能不够准确。至此,我们介绍了一个由多个椭圆子对象组成的非椭圆EST,每个EST由一个随机矩阵表示。基于这样的模型,多伯努利滤波器用于估计每个EST的运动状态和子对象的扩展。但是,在多个EST场景中,由于EST参数的波动,检测配置文件是事先未知的。在这种扩展滤波器中,诸如检测概率之类的参数至关重要。为了解决这些问题,提出了一种β高斯逆Wishart实现,以未知的检测概率和运动状态来估计EST范围的增加。结果表明,与最近扩展的概率假设密度(PHD)和基数化的PHD滤波器相比,该滤波器具有更准确的基数估计和较小的最优子​​模式分配误差。

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