目标跟踪的约束扩展卡尔曼滤波

A. E. Nordsjo
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引用次数: 23

摘要

提出了一种用于运动目标位置和速度跟踪的扩展卡尔曼滤波器EKF。所建议的方法是基于一个非线性模型,此外,该模型还包含了估计目标位置测量中可能存在的非线性的方法。在许多实际情况下,对目标位置和速度的初始估计与真实情况有很大的偏差。为了减少错误初始条件的影响,从而获得更快的初始收敛到可接受轨迹,引入了EKF的某种约束形式,称为CEKF。虽然纯线性系统的原始卡尔曼滤波器是固有稳定的,但不能保证EKF中使用的线性化模型给出稳定的算法。因此,值得注意的是,所提出的CEKF在某些温和条件下呈现指数稳定的算法。结果表明,后一种方法可以方便地表述为具有二次不等式约束的非线性最小化问题。
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A constrained extended Kalman filter for target tracking
An extended Kalman filter, EKF, is proposed for tracking the position and velocity of a moving target. The suggested method is based on a nonlinear model which, in addition, incorporates means for estimating possible nonlinearities in the measurements of the target position. In many practical scenarios, the initial estimates of target position and velocity deviate significantly from the true ones. In order to reduce the impact of erroneous initial conditions and, hence, obtain a faster initial convergence to an acceptable trajectory, a certain constrained form of the EKF, named the CEKF, is introduced. Although the original Kalman filter for a purely linear system is inherently stable, there is no guarantee that the linearized model used in the EKF gives a stable algorithm. Hence, it is interesting to note that the proposed CEKF under certain mild conditions renders an exponentially stable algorithm. It is shown that this latter method can conveniently be formulated as a nonlinear minimization problem with a quadratic inequality constraint.
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