首页> 外文会议>Conference on Signal and Data Processing of Small Targets 2004; 20040413-20040415; Orlando,FL; US >Cost-Function-Based Hypothesis Control Techniques for Multiple Hypothesis Tracking
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Cost-Function-Based Hypothesis Control Techniques for Multiple Hypothesis Tracking

机译:基于成本函数的假设控制技术用于多重假设跟踪

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摘要

The problem of tracking targets in clutter naturally leads to a Gaussian mixture representation of the probability density function of the target state vector. Modern tracking methods maintain the mean, covariance and probability weight corresponding to each hypothesis, yet they rely on simple merging and pruning rules to control the growth of hypotheses. This paper proposes a structured, cost-function-based approach to the hypothesis control problem, utilizing the Integral Square Error (ISE) cost measure. A comparison of track life performance versus computational cost is made between the ISE-based filter and previously proposed approximations including simple pruning, Singer's n-scan memory filter, Salmond's joining filter, and Chen and Liu's Mixture Kalman Filter (MKF). The results demonstrate that the ISE-based mixture reduction algorithm provides track life performance which is significantly better than the compared techniques using similar numbers of mixture components, and performance competitive with the compared algorithms for similar mean computation times.
机译:在杂波中跟踪目标的问题自然会导致目标状态向量的概率密度函数的高斯混合表示。现代跟踪方法保持与每个假设相对应的均值,协方差和概率权重,但它们依靠简单的合并和修剪规则来控制假设的增长。本文提出了一种基于结构,基于成本函数的假设控制问题的方法,该方法利用了积分平方误差(ISE)成本度量。在基于ISE的滤波器与先前提出的近似值之间进行了跟踪寿命性能与计算成本的比较,这些近似值包括简单修剪,Singer的n扫描内存滤波器,Salmond的连接滤波器以及Chen和Liu的Mixture Kalman滤波器(MKF)。结果表明,基于ISE的混合减少算法提供的跟踪寿命性能明显优于使用相似数量的混合组分的比较技术,并且在类似的平均计算时间上,该性能与比较算法相比具有竞争优势。

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