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Extended Kalman Filtering and Maximum-Likelihood Estimation for Point Target Localisation

机译:点目标定位的扩展卡尔曼滤波和最大似然估计

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Estimation of the location of point targets from radar observations will be investigated. The location can be determined from the echo's delay and the aspect angles to the target, which can be inferred by e.g. an maximum-likelihood (ML) estimator. For rapidly moving targets delay and aspect angles undergo fast variations. Therefore, short time observations are only considerable for the estimator application. Hence, the estimation effort becomes high for a long time observation of the targets. Target tracking by extended Kalman filter (EKF) will be considered in order to reduce the computational effort. A simulation based comparison of ML and EKF based target localisation accuracy will be drawn.
机译:将研究从雷达观测中估计点目标的位置。可以根据回声的延迟和与目标的纵横角来确定位置,这可以通过例如图3来推断。最大似然(ML)估算器。对于快速移动的目标,延迟和纵横角会快速变化。因此,短时观测仅对估计器应用有意义。因此,对于长时间观察目标,估计工作量变高。为了减少计算量,将考虑使用扩展卡尔曼滤波器(EKF)进行目标跟踪。将得出基于ML和EKF的目标定位精度的基于仿真的比较。

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