Track split smoothing for target tracking in clutter

S. Memon, Hungsun Son, Sana Ahmed, Awais Ali Memon
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引用次数: 2

Abstract

The proposed integrated track split (ITS) smoothing utilize smoothing data association algorithm for tracking a target. We implemented two independent ITS filters; forward running ITS (fITS) filter and backward running ITS (bITS) filter. The novelty of the proposed algorithm is that the backward multi-track component predictions are applied to each forward track component prediction to produce multiple information fusion component predictions based on the data association technique. The information fusion state predictions are applied to all available measurements received in current scan to smooth track state estimations and target existence probabilities. A new technique is developed which applies smoothing estimates to compute the fITS estimate in the current scan. This efficiently leads forward path track to track a target in heavy clutter. The algorithm is known as fixed-interval smoothing ITS (FIsITS). The numerical simulation verifies the false track discrimination (FTD) capability of the FIsITS.
杂波条件下的目标跟踪分割平滑
所提出的综合航迹分割(ITS)平滑利用平滑数据关联算法对目标进行跟踪。我们实现了两个独立的ITS滤波器;正向运行ITS (fITS)滤波器和反向运行ITS (bITS)滤波器。该算法的新颖之处在于将后向多航迹分量预测应用于每个前向航迹分量预测,产生基于数据关联技术的多个信息融合分量预测。将信息融合状态预测应用于当前扫描接收到的所有可用测量值,以平滑跟踪状态估计和目标存在概率。提出了一种利用平滑估计计算当前扫描中fITS估计的新方法。这有效地引导了前进路径跟踪,以跟踪重杂波中的目标。该算法被称为固定间隔平滑ITS (FIsITS)。通过数值仿真验证了该系统的伪航迹识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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