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Road-Cons trained Target Tracking and Identification Using a Particle Filter

机译:使用粒子过滤器训练的目标跟踪和识别

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Sequential Monte Carlo methods have attracted the attention of the tracking community as a solution to Bayesian estimation particularly for nonlinear problems. Several attributes of particle filters support their use in jointly tracking and identifying ground targets in a road-constrained network. First, since the target dynamics are simulated, propagating a target within a constrained state space is handled quite naturally since the particle filter is not restricted to propagating Gaussian PDFs. Furthermore, a particle filter can approximate the PDF of a mixture of continuous random variables (the target kinematic state) and discrete random variables (the target ID) which is necessary for the joint tracking and identification problem. Given HRRGMTI measurements of a target, we propose to jointly estimate a target's kinematic state and identification by propagating the joint PDF of the target kinematic state (position and velocity) and target ID. In this way, we capitalize on the inherent coupling between the target's feature measurement (the HRR profile) and the target's kinematic state. In addition to the coupling between a target's feature measurement and the target's kinematic state, there exists a coupling between a target's dynamics and the target's ID which can also be exploited through particle filtering methods. We develop the particle filtering algorithm for tracking and identifying ground targets in a road-constrained environment and present simulation results for a two-class problem.
机译:顺序蒙特卡罗方法引起了跟踪界的注意力作为贝叶斯估计的解决方案,特别是对于非线性问题。粒子滤波器的几个属性支持它们在共同跟踪和识别道路约束网络中的地面目标。首先,由于模拟了目标动态,因此自然地处理在约束状态空间内的目标,因为粒子滤波器不限于传播高斯PDF。此外,粒子滤波器可以近似连续随机变量(目标运动状态)和离散随机变量(目标ID)的混合物的PDF,这对于联合跟踪和识别问题所需的是所必需的。给定目标的HRRGMTI测量,我们建议通过传播目标运动状态(位置和速度)和目标ID的关节PDF来共同估计目标的运动状态和鉴定。以这种方式,我们利用目标特征测量(HRR谱)与目标运动状态之间的固有耦合。除了目标特征测量和目标运动状态之间的耦合之外,目标的动态和目标ID之间还存在耦合,其也可以通过颗粒滤波方法利用。我们开发用于跟踪和识别道路约束环境中的地面目标的粒子滤波算法,并对两类问题的仿真结果存在仿真结果。

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