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Fuzzy-Based Evidence Accrual for Target Maneuver Detection

机译:基于模糊证据的目标机动检测

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摘要

One of the primary techniques for target tracking is the Kalman filter or one of its many variants. While the Kalman filter has been the staple of the tracking community, it has been shown to have drawbacks. When a target performs a maneuver, the tracking solution of the filter can experience deleterious issues. The most common issue is a lag in the position of the target track compared to the true target position as the target performs its maneuver. A more problematic issue occurs when the filter covariance collapses which requires the filter to be reinitialized. While techniques exist that compensate for maneuvers, they rely on detecting the error in the estimated trajectory and the measured target position to generate their response. In this effort, a maneuver detection routine is developed that can be used in conjunction with the standard maneuver compensation approaches. This routine validates the existence of a maneuver more quickly than using inherent detection methods of the other methods. The maneuver detection is performed by an evidence accrual system that uses a fuzzy Kalman filter to incorporate new information and provide a level of evidence that maneuver is occurring. The input data uses behavior characteristics of the Kalman gain vector from the tracking algorithm.
机译:目标跟踪的主要技术之一是卡尔曼滤波器或它的许多变体之一。虽然卡尔曼滤波器一直是跟踪领域的主要内容,但事实证明它有缺点。当目标执行机动时,过滤器的跟踪解决方案可能会遇到有害问题。最常见的问题是,在目标执行机动时,目标轨道的位置与真实目标位置相比存在滞后。当滤波器协方差崩溃时,会出现更多问题,这需要重新初始化滤波器。尽管存在补偿机动的技术,但它们依靠检测估计的轨迹中的误差和测得的目标位置来产生响应。在这种努力下,开发了可与标准机动补偿方法结合使用的机动检测程序。该例程比使用其他方法的固有检测方法更快地验证了动作的存在。机动检测由证据累积系统执行,该系统使用模糊卡尔曼滤波器合并新信息并提供一定水平的证据表明正在发生机动。输入数据使用来自跟踪算法的卡尔曼增益向量的行为特征。

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