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Multisensor-Based Target-Tracking Algorithm with Out-of-Sequence-Measurements in Cluttered Environments

机译:杂乱环境下基于多传感器的目标跟踪算法

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摘要

A localization and tracking algorithm for an early-warning tracking system based on the information fusion of Infrared (IR) sensor and Laser Detection and Ranging (LADAR) is proposed. The proposed Kalman filter scheme incorporates Out-of-Sequence Measurements (OOSMs) to address long-range, high-speed incoming targets to be tracked by networked Remote Observation Sites (ROS) in cluttered environments. The Rauch–Tung–Striebel (RTS) fixed lag smoothing algorithm is employed in the proposed technique to further improve tracking accuracy, which, in turn, is used for target profiling and efficient filter initialization at the targeted platform. This efficient initialization increases the probability of target engagement by increasing the distance at which it can be effectively engaged. The increased target engagement range also reduces risk of any damage from debris of the engaged target. Performance of the proposed target localization algorithm with OOSM and RTS smoothing is evaluated in terms of root mean square error (RMSE) for both position and velocity, which accurately depicts the improved performance of the proposed algorithm in comparison with existing retrodiction-based OOSM filtering algorithms. The effects of assisted target state initialization at the targeted platform are also evaluated in terms of Time to Impact (TTI) and true track retention, which also depict the advantage of the proposed strategy.
机译:提出了一种基于红外(IR)传感器与激光探测与测距(LADAR)信息融合的预警跟踪系统定位与跟踪算法。拟议的卡尔曼滤波器方案结合了乱序测量(OOSM),以解决在杂乱环境中由网络远程观测站点(ROS)跟踪的远程高速传入目标。拟议的技术中采用了劳赫-桐-斯特里贝尔(RTS)固定滞后平滑算法,以进一步提高跟踪精度,进而将其用于目标分析和目标平台上的有效滤波器初始化。这种有效的初始化通过增加目标有效接合的距离来增加目标接合的可能性。增大的目标接合范围还可以降低因接合目标碎屑而造成任何损坏的风险。根据位置和速度的均方根误差(RMSE)评估了采用OOSM和RTS平滑的拟议目标定位算法的性能,与现有的基于追溯的OOSM滤波算法相比,该算法准确地描述了所提出算法的改进性能。还根据影响时间(TTI)和真实轨迹保留来评估目标平台上辅助目标状态初始化的效果,这也说明了所提出策略的优势。

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