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Maneuvering target track-before-detect via multiple-model Bernoulli particle filter

机译:通过多模型伯努利粒子过滤器对目标进行先行跟踪机动

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摘要

Target tracking using non-threshold raw data with low signal-to-noise ratio is a very difficult task, and the model uncertainty introduced by target’s maneuver makes it even more challenging. In this work, a multiple-model based method was proposed to tackle such issues. The method was developed in the framework of Bernoulli filter by integrating the model probability parameter and implemented via sequential Monte Carlo (particle) technique. Target detection was accomplished through the estimation of target’s existence probability, and the estimate of target state was obtained by combining the outputs of model- dependent filtering. The simulation results show that the proposed method performs better than the TBD method implemented by the conventional multiple-model particle filter.
机译:使用低阈值信噪比的非阈值原始数据进行目标跟踪是一项非常困难的任务,而目标机动所引入的模型不确定性使其更具挑战性。在这项工作中,提出了一种基于多模型的方法来解决此类问题。该方法是在伯努利滤波器的框架内通过集成模型概率参数开发的,并通过顺序蒙特卡洛(粒子)技术实现。目标检测是通过估计目标的存在概率来完成的,而目标状态的估计是通过组合模型相关过滤的输出来获得的。仿真结果表明,该方法的性能优于传统的多模型粒子滤波器实现的TBD方法。

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