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Joint detection, tracking and classification of a manoeuvring target in the finite set statistics framework

机译:在有限集统计框架中对机动目标进行联合检测,跟踪和分类

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摘要

Target detection, tracking and classification are three essential and closely coupled subjects for most surveillance systems. In the finite set statistics (FISST) framework, this paper presents a Bayesian and recursive solution to joint detection, tracking and classification (JDTC) of a manoeuvring target in a cluttered environment, which is inspired by previous work on joint target tracking and classification in the classical Bayesian filter framework. The derived JDTC algorithm exploits the dependence of target state on target class by using class-dependent dynamical model sets. The relative merits of this JDTC algorithm are demonstrated via a two-dimensional example using a sequential Monte Carlo implementation. It is shown that handling those three closely coupled subjects jointly can achieve comparable detection and tracking performance to that of the exact filter in the FISST framework with a prior known class. The classification results are consistent with the previous work.
机译:目标检测,跟踪和分类是大多数监视系统的三个必不可少且紧密联系的主题。在有限集统计(FISST)框架中,本文提出了一种用于在杂乱环境中对机动目标进行联合检测,跟踪和分类(JDTC)的贝叶斯和递归解决方案,该方法的灵感来自于之前在联合目标跟踪和分类中的工作。经典贝叶斯过滤器框架。派生的JDTC算法通过使用与类相关的动力学模型集来利用目标状态对目标类的依赖性。通过使用顺序蒙特卡洛实现的二维示例,演示了此JDTC算法的相对优点。结果表明,联合处理这三个紧密耦合的主题可以实现与FISST框架中具有已知类的精确过滤器相当的检测和跟踪性能。分类结果与以前的工作一致。

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