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Adaptive tracking algorithm based on 3D variable turn model 被引量:1
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作者 Xiaohua Nie Fuming Zhang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2017年第5期851-860,共10页
Satisfactory results cannot be obtained when three-dimensional (3D) targets with complex maneuvering characteristics are tracked by the commonly used two-dimensional coordinated turn (2DCT) model. To address the probl... Satisfactory results cannot be obtained when three-dimensional (3D) targets with complex maneuvering characteristics are tracked by the commonly used two-dimensional coordinated turn (2DCT) model. To address the problem of 3D target tracking with strong maneuverability, on the basis of the modified three-dimensional variable turn (3DVT) model, an adaptive tracking algorithm is proposed by combining with the cubature Kalman filter (CKF) in this paper. Through ideology of real-time identification, the parameters of the model are changed to adjust the state transition matrix and the state noise covariance matrix. Therefore, states of the target are matched in real-time to achieve the purpose of adaptive tracking. Finally, four simulations are analyzed in different settings by the Monte Carlo method. All results show that the proposed algorithm can update parameters of the model and identify motion characteristics in real-time when targets tracking also has a better tracking accuracy. 展开更多
关键词 maneuvering target tracking adaptive tracking algorithm modified three-dimensional variable turn (3DVT) model cubature Kalman filter (CKF)
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Robust estimation algorithm for multiple-structural data
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作者 Zhiling Wang Zonghai Chen 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2010年第5期900-906,共7页
This paper proposes a robust method of parameter estimation and data classification for multiple-structural data based on the linear error in variable(EIV) model.The traditional EIV model fitting problem is analyzed... This paper proposes a robust method of parameter estimation and data classification for multiple-structural data based on the linear error in variable(EIV) model.The traditional EIV model fitting problem is analyzed and a robust growing algorithm is developed to extract the underlying linear structure of the observed data.Under the structural density assumption,the C-step technique borrowed from the Rousseeuw's robust MCD estimator is used to keep the algorithm robust and the mean-shift algorithm is adopted to ensure a good initialization.To eliminate the model ambiguities of the multiple-structural data,statistical hypotheses tests are used to refine the data classification and improve the accuracy of the model parameter estimation.Experiments show that the efficiency and robustness of the proposed algorithm. 展开更多
关键词 robust estimation computer vision linear error in variable(EIV) model multiple-structural data MEAN-SHIFT C-step.
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