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Joint Detection, Tracking, and Classification of Multiple Targets in Clutter using the PHD Filter

机译:使用PHD滤波器对杂波中的多个目标进行联合检测,跟踪和分类

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摘要

To account for joint detection, tracking, and classification (JDTC) of multiple targets from a sequence of noisy and cluttered observation sets, this paper introduces a recursive algorithm based on the probability hypothesis density (PHD) filter with the particle implementation. Assuming that each target class has a class-dependent kinematic model set, a class-matched PHD-like filter (i.e., PHD filter or its multiple-model implementation (MMPHD)) is assigned to it. In the prediction stage, the particles are propagated according to their class-dependent kinematic model set in the matched PHD-like filter. Then, the mutual information exchange between these PHD-like filters is completed by updating the particle weights in the update stage. The particles with the same class label and their corresponding weights represent the estimated class-conditioned PHD distribution. These class-conditioned PHD distributions are used to jointly estimate the number of the corresponding class targets and their states. Moreover, the algorithm incorporates the feature measurements into these PHD-like filters. The proposed multitarget JDTC algorithm has four distinctive features. First, it has a flexible modularized structure, i.e., it assigns a class-matched PHD-like filter for each target class, and facilitates the incorporation of the extra PHD-like filter for a new target class. Second, the particles can be propagated according to their exact class-dependent kinematic model set thanks to the modularized structure. Third, because of the feature measurements added and no explicit associations, it can track multiple closely spaced targets from different classes. Fourth, it avoids the possibility that the target classes with temporarily low likelihoods can end up being permanently lost. The computational burden of the proposed algorithm is linearly increased with the class number of targets. The algorithm is illustrated via a simulation example involving the tracking of two closely space- parallel moving targets and two crossing moving targets from different classes, where targets can appear and disappear.
机译:为了考虑来自一系列嘈杂和杂乱的观测集的多个目标的联合检测,跟踪和分类(JDTC),本文介绍了一种基于概率假设密度(PHD)过滤器并带有粒子实现的递归算法。假设每个目标类别都有一个与类别有关的运动学模型集,则为其分配一个类别匹配的类PHD过滤器(即PHD过滤器或其多模型实现(MMPHD))。在预测阶段,根据匹配的类PHD滤波器中设置的类相关运动模型传播粒子。然后,通过在更新阶段更新粒子权重,完成这些PHD类滤波器之间的相互信息交换。具有相同类别标签及其相应权重的粒子表示估计的类别条件PHD分布。这些基于类别条件的PHD分布用于共同估计相应类别目标的数量及其状态。此外,该算法将特征量度合并到这些类似PHD的滤波器中。提出的多目标JDTC算法具有四个鲜明的特征。首先,它具有灵活的模块化结构,即,它为每个目标类别分配了一个类别匹配的类PHD过滤器,并为新的目标类别促进了额外的类PHD过滤器的合并。其次,由于采用模块化结构,可以根据其确切的类相关运动模型集传播粒子。第三,由于添加了特征度量并且没有明确的关联,因此它可以跟踪来自不同类别的多个紧密间隔的目标。第四,它避免了可能性极低的目标类别最终永久丢失的可能性。该算法的计算量随着目标类别的增加而线性增加。通过一个仿真示例说明了该算法,该仿真示例涉及跟踪两个不同类别的空间紧密平行的移动目标和两个交叉的移动目标,其中目标可以出现和消失。

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