基于运动空间信息的机动目标雷达- ais航迹关联神经方法验证

W. Kazimierski
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引用次数: 4

摘要

本文研究了海上导航中跟踪雷达与AIS系统的融合问题。重点研究了目标关联过程,这是航迹到航迹融合的基础。该分析为关联过程提供了神经网络方法,其中神经网络对关联是否需要陈述进行分类。本文介绍了该方法的理论基础,并进行了数值实验,分析了各种神经网络在关联中的性能。研究场景包括目标的航向机动,结论证实了利用神经网络获得的良好结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Verification of neural approach to radar-AIS tracks association for maneuvering targets based on kinematic spatial information
The paper undertakes a problem of tracking radar and AIS fusion in maritime navigation. The focus is laid on target association process, which is the basis for track-to-track fusion. The analysis provides neural approach to association process in which neural network classifies if the association should be stated or not. The paper includes theoretical basics of the proposed approach, as well as numerical experiment in which the performance of various neural networks for association is analyzed. Research scenario includes course maneuver of the target and the conclusions confirms promising results obtained with the use of neural networks.
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