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A simulation system for feature-aided tracking research

机译:用于特征跟踪研究的仿真系统

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摘要

Many years of tracking research have shown that the greatest obstacle to effective track estimation is accurately associating sensor kinematic reports to known tracks, new tracks, or clutter. Errors in report association occur more frequently under increasingly stressful conditions, like closely-spaced targets and low measurement rates, which can lead to unstable and even divergent tracking performance. It is widely expected that adding target features will aid report association and result in enhanced track accuracy and lengthened track life. Although sensors can provide features to enhance association, progress in implementing feature aiding has been slowed by the lack of data and tools that could assist exploration and algorithm development. To encourage research in this important discipline, the Sensors Directorate of the Air Force Research Laboratory (AFRL/SN) is sponsoring a challenge problem called Feature-Aided Tracking of Stop-move Objects (FATSO). FATSO's long-range goal is to provide a full suite of public data and software to promote explorations into viable methods of feature aiding. This paper introduces the FATSO project, focusing on an upcoming release that will contain data from a diverse target set and predictor software for generating radar signatures.
机译:多年的跟踪研究表明,有效轨迹估计的最大障碍是将传感器运动学报告与已知轨迹,新轨迹或混乱情况准确关联。在压力越来越大的条件下,报告关联中的错误会更加频繁地发生,例如目标间距很近且测量速率较低,这可能导致跟踪性能不稳定甚至分散。广泛预期添加目标功能将有助于报表关联,并提高跟踪精度并延长跟踪寿命。尽管传感器可以提供增强关联的功能,但是由于缺少有助于探索和算法开发的数据和工具,因此实现功能辅助的进度已减慢。为了鼓励在这一重要学科中进行研究,空军研究实验室(AFRL / SN)传感器局赞助了一个挑战性问题,即“移动物体的辅助跟踪”(FATSO)。 FATSO的长期目标是提供全套公共数据和软件,以促进探索可行的功能辅助方法。本文介绍FATSO项目,重点关注即将发布的版本,该版本将包含来自各种目标集和用于生成雷达信号的预测器软件的数据。

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