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Particle filter track-before-detect algorithm with Lamarckian inheritance for improved dim target tracking

机译:具有Lamarckian遗传的粒子过滤器先检测后跟踪算法可改善暗淡目标跟踪

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Particle filter track-before-detect (PF-TBD) algorithms offer improvements over track-after-detect algorithms in detecting and tracking dim targets. However, it suffers from the particle collapsing problem, which can lead to deteriorated detection and tracking performance. To address this issue, a Lamarckian particle filter track-before-detect (LPF-TBD) algorithm is developed in this paper. In the LPF-TBD, before a TBD resampling process, a particle update strategy is applied, which is based on Lamarckian overriding and elitist operators designed to improve the particle diversity and efficiency. The effectiveness of the LPF-TBD algorithm is demonstrated using a widely adopted experiment on a target with a low signal-to-noise ratio in an image sequence. Compared with the currently-popular multinomial resampling PF-TBD method, the posterior distribution in the LPF-TBD can be more sufficiently approximated by the particles. Test results show that the LPF-TBD offers higher detection and tracking performance, while strengthening the algorithmic efficiency of particle filtering and evolutionary algorithms.
机译:粒子过滤器先检测后跟踪(PF-TBD)算法在检测和跟踪暗淡目标方面比先检测后跟踪算法有所改进。但是,它遭受了粒子崩溃的问题,这可能导致检测和跟踪性能下降。为了解决这个问题,本文提出了一种拉马克粒子过滤器检测前跟踪(LPF-TBD)算法。在LPF-TBD中,在进行TBD重采样之前,将应用粒子更新策略,该策略基于Lamarckian压倒性和精英操作员,旨在提高粒子的多样性和效率。 LPF-TBD算法的有效性通过在图像序列中具有低信噪比的目标上广泛使用的实验得到证明。与当前流行的多项式重采样PF-TBD方法相比,LPF-TBD中的后验分布可以更充分地被粒子近似。测试结果表明,LPF-TBD具有更高的检测和跟踪性能,同时增强了粒子滤波和进化算法的算法效率。

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