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Rough fuzzy joint probabilistic association for tracking multiple targets in the presence of ECM

机译:粗糙模糊联合概率关联用于在ECM存在下跟踪多个目标

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摘要

A novel rough fuzzy joint probabilistic data association algorithm (RF-JPDA) is presented to improve the performance of multitarget tracking in the presence of clutter, electronic countermeasures (ECM) and false alarms. The possibility data association matrix is evaluated by applying upper and lower approximations of validated measurements which are obtained from the radar. Four case studies are taken to validate the proposed data association algorithm. The proposed technique performance has been compared with conventional joint probabilistic data association filter (JPDA), fuzzy clustering means (FCM), and fuzzy Genetic Algorithm (Fuzzy-GA) approaches. A hybrid data association approach is formulated and examined for multi-target tracking using intelligent technique. Further, it is evident from the experimental results that RF-JPDA approach is providing enhanced performance in terms of position root mean square error (RMSE), velocity RMSE and execution time for all cases. The average position and velocity RMSE of RF-JPDA are 42.3% and 16.98% less when compared to conventional JPDA. Thus accomplishing novel and effective multiple target tracking algorithm based on expert systems. (C) 2018 Elsevier Ltd. All rights reserved.
机译:提出了一种新颖的粗糙模糊联合概率数据关联算法(RF-JPDA),以在杂波,电子对策(ECM)和错误警报的情况下提高多目标跟踪的性能。通过应用从雷达获得的经过验证的测量值的上下近似值,评估可能性数据关联矩阵。进行了四个案例研究,以验证所提出的数据关联算法。所提出的技术性能已与常规联合概率数据关联过滤器(JPDA),模糊聚类方法(FCM)和模糊遗传算法(Fuzzy-GA)方法进行了比较。制定了混合数据关联方法,并使用智能技术对其进行了多目标跟踪。此外,从实验结果可以明显看出,RF-JPDA方法在所有情况下的位置均方根误差(RMSE),速度RMSE和执行时间方面均提供了增强的性能。与传统的JPDA相比,RF-JPDA的平均位置和速度RMSE分别降低了42.3%和16.98%。从而完成了基于专家系统的新颖有效的多目标跟踪算法。 (C)2018 Elsevier Ltd.保留所有权利。

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