School of Electronic and Information Engineering, Xi'an Jiaotong University, Xi'an 710049, China.
Sensors (Basel). 2018 Sep 26;18(10):3241. doi: 10.3390/s18103241.
Standard Bayesian filtering algorithms only work well when the statistical properties of system noises are exactly known. However, this assumption is not always plausible in real target tracking applications. In this paper, we present a new estimation approach named adaptive fifth-degree cubature information filter (AFCIF) for multi-sensor bearings-only tracking (BOT) under the condition that the process noise follows zero-mean Gaussian distribution with unknown covariance. The novel algorithm is based on the fifth-degree cubature Kalman filter and it is constructed within the information filtering framework. With a sensor selection strategy developed using observability theory and a recursive process noise covariance estimation procedure derived using the covariance matching principle, the proposed filtering algorithm demonstrates better estimation accuracy and filtering stability. Simulation results validate the superiority of the AFCIF.
标准贝叶斯滤波算法只有在系统噪声的统计特性完全已知的情况下才能很好地工作。然而,在实际的目标跟踪应用中,这种假设并不总是合理的。在本文中,我们提出了一种新的估计方法,称为自适应五阶容积信息滤波器(AFCIF),用于在过程噪声服从均值为零的未知协方差高斯分布的情况下进行多传感器仅测角跟踪(BOT)。该新算法基于五阶容积卡尔曼滤波器,并在信息滤波框架内构建。通过使用可观性理论开发的传感器选择策略和使用协方差匹配原理推导出的递归过程噪声协方差估计过程,所提出的滤波算法表现出更好的估计精度和滤波稳定性。仿真结果验证了 AFCIF 的优越性。