Target tracking methods based on a signal-to-noise ratio model
Dai LIU, Yong-bo ZHAO, Zi-qiao YUAN, Jie-tao LI, Guo-ji CHEN
Target tracking methods based on a signal-to-noise ratio model
In traditional target tracking methods, the angle error and range error are often measured by the empirical value, while observation noise is a constant. In this paper, the angle error and range error are analyzed. They are influenced by the signalto-noise ratio (SNR). Therefore, a model related to SNR has been established, in which the SNR information is applied for target tracking. Combined with an advanced nonlinear filter method, the extended Kalman filter method based on the SNR model (SNR-EKF) and the unscented Kalman filter method based on the SNR model (SNR-UKF) are proposed. There is little difference between the SNR-EKF and SNR-UKF methods in position precision, but the SNR-EKF method has advantages in computation time and the SNR-UKF method has advantages in velocity precision. Simulation results show that target tracking methods based on the SNR model can greatly improve the tracking performance compared with traditional tracking methods. The target tracking accuracy and convergence speed of the proposed methods have significant improvements.
Signal-to-noise ratio (SNR) model / Target tracking / Angle error / Range error / Nonlinear filter
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