多目标跟踪理论在海洋监视中的应用

D. Reid
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引用次数: 13

摘要

本文总结和扩展了多目标跟踪理论的最新成果,并将结果应用于海洋监测实例。船舶的相关特征可以用离散值或连续值状态变量来表征。提出了一种估计两种状态变量的算法。属性信息的包含有助于解决数据关联问题,但会使目标表示变得复杂。此外,该算法还能够初始化跟踪,计算错误或丢失的报告,以及处理相关报告集。当接收到每个测量值时,将根据以下假设计算概率:测量值来自目标文件中先前已知的目标、来自新目标,或者测量值为假。当接收到更多的测量值时,使用所有可用的信息递归地计算联合假设的概率,例如:未知目标的密度、假目标的密度、检测概率、位置不确定性以及目标身份、目标类型、联系号码和类型雷达等属性数据。这种分支技术允许基于后续和先前数据的测量与其源进行关联。为了使假设的数量保持合理,排除不可能的假设,并将目标估计值相似的假设组合起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The application of multiple target tracking theory to ocean surveillance
This paper summarizes and extends recent results in Multiple-Target Tracking theory and applies the results to an Ocean Surveillance example. The relevant features of ships are characterized by either discrete-valued or continuous-valued state variables. An algorithm is developed which estimates both types of state variables. The inclusion of the attribute information aids the data association problem but complicates the target representation. In addition, the algorithm is capable of initiating tracks, accounting for false or missing reports, and processing sets of dependent reports. As each measurement is received, probabilities are calculated for the hypotheses that the measurement came from previously known targets in a target file, from a new target, or that the measurement is false. As more measurements are received, the probabilities of joint hypotheses are calculated recursively using all available information, such as: density of unknown targets, density of false targets, the probability of detection, location uncertainty and attribute data such as target identity, target type, contact number, and type radar. This branching technique allows correlation of a measurement with its source based upon subsequent, as well as previous data. To keep the number of hypotheses reasonable, unlikely hypotheses are eliminated and hypotheses with similar target estimates are combined.
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