A variety of filters with track-before-detect (TBD) strategies have been developed and applied to low signal-to-noise ratio (SNR) scenarios, including the probability hypothesis density (PHD) filter. Assumptions of the standard point measurement model based on detect-before-track (DBT) strategies are not suitable for the amplitude echo model based on TBD strategies. However, based on different models and unmatched assumptions, the measurement update formulas for DBT-PHD filter are just mechanically applied to existing TBD-PHD filters. In this paper, based on the Kullback-Leibler divergence minimization criterion, finite set statistics theory and rigorous Bayes rule, a principled closed-form solution of TBD-PHD filter is derived. Furthermore, we emphasize that PHD filter is conjugated to the Poisson prior based on TBD strategies. Next, a capping operation is devised to handle the divergence of target number estimation as SNR increases. Moreover, the sequential Monte Carlo implementations of dynamic and amplitude echo models are proposed for the radar system. Finally, Monte Carlo experiments exhibit good performance in Rayleigh noise and low SNR scenarios.
翻译:开发了含有先探测先探测先探测战略的各种过滤器,并将其应用于低信号到噪音比率(SNR)假设情景,包括概率假设密度过滤器;基于先探测先探测战略的标准点测量模型的假设不适合基于TBD战略的振幅回声模型;然而,根据不同的模型和不匹配的假设,DBT-PHD过滤器的测量更新公式仅仅机械地应用于现有的TBD-PHD过滤器;本文根据Kullback-Leibler最小差异标准、定定定统计理论和严格的Bayes规则,为TBD-PHD过滤器制定了一条原则封闭式解决方案;此外,我们强调PHD过滤器与Poisson之前基于TD战略的封闭式解决方案相提并进;接着,设计了一种封顶操作,随着SNR的增加,处理目标数估计的差异。此外,还提议在雷达系统上按顺序实施动态和倾角回应模型。