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Self-adaptive Constant Acceleration Model and Its Tracking Algorithm Based on STF

机译:基于STF的自适应恒加速度模型及其跟踪算法

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In sensor target tracking and data processing, building a dynamic model of target motion plays an important role. Current Statistical (CS) model is one of better target dynamic models that were widely applied in practical problems now. However, for tracking nonmaneuvering targets, using CS model will cause large error. Furthermore, the conventional tracking algorithm corresponding to CS model is based on Kalman Filter (KF) or extended Kalman filter (EKF). But KF and EKF have bad robustness on the modeling uncertainty, and are sensitive to the initial conditions. In order to overcome the shortcomings of CS model and its tracking algorithm, a self-adaptive constant acceleration (CA) model and its tracking algorithm (ACA-STF) is presented by comparison and study of CS model and CA model and introducing a fading factor of Strong Tracking Filter (STF) in the paper. The algorithm can self-adaptively adjust the covariance matrix of process noise and tune a filtering gain matrix on line. The theoretic analyses and simulation results show that this algorithm has better tracking performance to track non-maneuvering targets and maneuvering targets than CS model and its tracking algorithm.
机译:在传感器目标跟踪和数据处理中,构建目标运动的动态模型起着重要作用。当前统计(CS)模型是现在在实际问题中广泛应用的更好目标动态模型之一。但是,对于跟踪非管理目标,使用CS模型将导致大错误。此外,对应于CS模型的传统跟踪算法基于卡尔曼滤波器(KF)或扩展卡尔曼滤波器(EKF)。但KF和EKF对建模不确定性具有良好的稳健性,对初始条件敏感。为了克服CS模型及其跟踪算法的缺点,通过对CS模型和CA模型的比较和研究,提出了一种自适应恒定加速度(CA)模型及其跟踪算法(ACA-STF),并引入衰落因子纸张中的强力跟踪滤波器(STF)。该算法可以自适应地调整过程噪声的协方差矩阵并在线调整过滤增益矩阵。理论分析和仿真结果表明,该算法具有更好的跟踪性能,以跟踪非机动目标和机动目标而不是CS模型及其跟踪算法。

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