多目标跟踪的分支定界算法及其并行实现

Cheng Chen, R. Walker, Chin-Hu Feng
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引用次数: 1

摘要

多目标跟踪用于从一组检测到的测量数据中识别多点目标的运动路径。由于所有检测到的测量值通常具有统一的外观,因此很难区分一个目标和另一个目标,以及目标和假警报。基于信道噪声、目标起始率、虚警率和检测概率的统计信息,可以制定一个多假设检验,将每个测量与特定的源关联起来。然而,这种关联过程是一个计算爆炸性问题。通过将关联问题转化为等价的分配问题,分支定界算法可以提供一种有效的方法来生成假设,评估它们的可能性,并识别最可能的N个假设。分支定界算法的模块化自然导致了使用最佳优先搜索策略的并行计算机实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Branch-and-Bound Algorithm for Multiple-Target Tracking and its Parallel Implementation
Multiple-target tracking is used to identify the traveling paths of multiple point targets from a set of detected measurements. Since all the detected measurements often have a uniform look, it becomes difficult to distinguish one target from another, and targets from false alarms. Based on the statistical information about channel noise, target initiation rate, false alarm rate and probability of detection, a multiple-hypothesis testing can be formulated to associate each measurement with a specific source. However, this association process is a computationally explosive problem. By converting the association problem to an equivalent assignment problem, a branch-and-bound algorithm can be applied to provide an efficient method for generating hypotheses, evaluating their likelihood, and identifying the leading N most likely hypotheses. The modularity of the branch-and-bound algorithm leads naturally to a parallel computer implementation using the best-first search strategy.
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