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On expectation maximization applied to GMTI convoy tracking

机译:关于期望最大化应用于GMTI车队跟踪

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Collectively moving ground targets are typical of a military ground situation and have to be treated as separate aggregated entities. For a long-range ground surveillance application with airborne GMTI radar we in particular address the task of track maintenance for ground moving convoys consisting of a small number of individual vehicles. In the proposed approach the identity of the individual vehicles within the convoy is no longer stressed. Their kinematical state vectors are rather treated as internal degrees of freedom characterizing the convoy, which is considered as a collective unit. In this context, the Expectation Maximization technique (EM), originally developed for incomplete data problems in statistical inference and first applied to tracking applications by STREIT et al. [1, 2]. seems to be a promising approach. We suggest to embed the EM algorithm into a more traditional Bayesian tracking framework for dealing with false or unwanted sensor returns. The proposed distinction between 'external' and 'internal' data association conflicts (i.e. those among the convoy vehicles) should also enable the application of sequential track extraction techniques introduced by VAN KEUK [3] for aircraft formations, providing estimates of the number of the individual convoy vehicles involved. Even with sophisticated signal processing methods (STAP: Space-Time Adaptive Processing), ground moving vehicles can well be masked by the sensor specific clutter notch (Doppler blinding). This physical phenomenon results in interfering fading effects, which can well last over a longer series of sensor updates and therefore will seriously affect the track quality unless properly handled. Moreover, for ground moving convoys the phenomenon of Doppler blindness often superposes the effects induced by the finite resolution capability of the sensor. In many practical cases a separate modeling of resolution phenomena for convoy targets can therefore be omitted, provided the GMTI detection model is used. As an illustration we consider the contribution of the proposed GMTI sensor model to the problem of early recognition of a stopping convoy.
机译:集体移动地面目标是典型的军事地面局势,并且必须被视为单独的聚合实体。对于带空降GMTI雷达的远程地面监视应用,我们特别地解决了由少量单独车辆组成的地面移动车队的跟踪维护任务。在拟议的方法中,不再强调车队内部车辆内的单个车辆的身份。它们的运动状态载体相当被视为表征车队的内部自由度,其被认为是集体单元。在这种情况下,最初为统计推理的不完全数据问题开发的期望最大化技术(EM),并首先通过Streit等人应用于跟踪应用。 [1,2]。似乎是一个有希望的方法。我们建议将EM算法嵌入更传统的贝叶斯追踪框架,用于处理虚假或不需要的传感器返回。 “外部”和“内部”数据关联冲突(即车队车辆中的拟议区别)还应能够在飞机结构中介绍Van Keuk [3]推出的顺序轨道提取技术,提供估计涉及的个人车队车辆。即使具有复杂的信号处理方法(STAP:时空自适应处理),也可以通过传感器特定的杂波凹口(多普勒致盲)掩盖地面移动车辆。这种物理现象导致干扰衰落效果,这可以很好地持续更长系列的传感器更新,因此除非正确处理,否则将严重影响跟踪质量。此外,对于地面移动的车队,多普勒盲管的现象通常叠置了传感器的有限分辨率能力所引起的效果。如果使用GMTI检测模型,则在许多实际情况下,可以省略对等级目标的分辨率现象的单独建模。作为一名插图,我们考虑提出的GMTI传感器模型对止动车队的早期识别问题的贡献。

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