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New assignment-based data association for tracking move-stop-move targets

机译:新的基于分配的数据关联可跟踪移动目标

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We present a new assignment-based algorithm for data association in tracking ground targets employing evasive move-stop-move maneuvers using ground moving target indicator (GMTI) reports obtained from an airborne sensor. To avoid detection by the GMTI sensor, the targets deliberately stop for some time before moving again. The sensor does not detect a target when the latter's radial velocity (along the line-of-sight from the sensor) falls below a certain minimum detectable velocity (MDV). Even in the absence of move-stop-move maneuvers, the detection has a less-than-unity probability (PD<1) due to obscuration and thresholding. Then, it is of interest, when a target is not detected, to develop a systematic technique that can distinguish between lack of detection due to PD<1 and lack of detection due to a stop (or a near stop). Previously, this problem was solved using a variable structure interacting multiple model (VS-IMM) estimator with a stopped target model (VS-IMM-ST) without explicitly addressing data association. We develop a novel "two-dummy" assignment approach for move-stop-move targets that considers both the problem of data association as well as filtering. Typically, in assignment-based data association a "dummy" measurement is used to denote the nondetection event. The use of the standard single-dummy assignment, which does not handle move-stop-move motion explicitly, can result in broken tracks. The new algorithm proposed here handles the evasive move-stop-move motion by introducing a second dummy measurement to represent nondetection due to the MDV. We also present a likelihood-ratio-based track deletion scheme for move-stop-move targets. Using this two-dummy data association algorithm, the track corresponding to a move-stop-move target is kept "alive' during missed detections both due to MDV and due to PD<1. In addition, one can obtain reductions in both rms estimation errors as well as the total number of track breakages.
机译:我们提出了一种新的基于任务分配的数据跟踪算法,该算法使用从机载传感器获得的地面移动目标指示符(GMTI)报告,采用规避移动-停止-移动机动,跟踪地面目标。为了避免被GMTI传感器检测到,目标在再次移动之前会故意停止一段时间。当目标的径向速度(沿传感器的视线)低于某个最小可检测速度(MDV)时,传感器不会检测到目标。即使没有移动停止动作,由于遮挡和阈值化,检测的可能性小于统一概率(PD <1)。然后,感兴趣的是,当没有检测到目标时,开发一种可以区分由于PD <1引起的检测不足和由于停止(或接近停止)引起的检测不足的系统技术。以前,此问题是通过使用可变结构将多模型(VS-IMM)估计器与停止的目标模型(VS-IMM-ST)交互来解决的,而没有明确解决数据关联问题。我们针对移动停止目标开发了一种新颖的“双虚拟”分配方法,该方法既考虑了数据关联问题又考虑了过滤问题。通常,在基于分配的数据关联中,“虚拟”度量用于表示未检测到事件。使用标准的单虚拟分配(未明确处理移动停止移动)可能会导致轨迹中断。此处提出的新算法通过引入第二个虚拟测量值来表示由于MDV引起的未检测到,从而处理了跳跃式停停运动。我们还为移动停止目标提供了一种基于似然比的跟踪删除方案。使用这种双虚拟数据关联算法,由于MDV和PD <1,在错过检测期间,对应于停停移动目标的轨道将保持“活动”状态,此外,可以获得均方根估计值的降低错误以及磁道断裂的总数。

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