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Modified labeled particle probability hypothesis density filter for joint multi-target tracking and classification

机译:改进的带标记粒子概率假设密度滤波器用于联合多目标跟踪与分类

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Unification of the detection, tracking and classification for multiple targets is an object for random finite sets based filters developing. Introduction of target attribute information can improve tracking performance. Then, as the improved labeled particle probability hypothesis density (IL-P-PHD) filter is capable of joint detection and tracking, we will fuse obtained target attribute information into IL-P-PHD filter to propose a joint tracking and classification particle PHD (JTC-P-PHD) algorithm. We are in the expectation that the proposed JTC-P-PHD algorithm is capable of joint detection, tracking as well as classification of multiple targets. Numerical examples demonstrate that the proposed JTC-P-PHD algorithm behaves in a manner consistent with our expectations.
机译:多个目标的检测,跟踪和分类的统一是基于随机有限集的滤波器开发的目标。引入目标属性信息可以提高跟踪性能。然后,由于改进的标记粒子概率假设密度(IL-P-PHD)过滤器能够进行联合检测和跟踪,因此,我们将获得的目标属性信息融合到IL-P-PHD过滤器中,以提出联合跟踪和分类粒子PHD( JTC-P-PHD)算法。我们期望所提出的JTC-P-PHD算法能够对多个目标进行联合检测,跟踪和分类。数值算例表明,所提出的JTC-P-PHD算法的行为符合我们的期望。

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