船舶运动模式在海上态势感知中的关联学习

N. Bomberger, B. Rhodes, M. Seibert, A. Waxman
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引用次数: 116

摘要

受神经生物学启发的算法已经被开发出来,可以在各种概念、空间和时间层面上不断学习行为模式。在本文中,我们概述了我们在海洋领域使用这些算法进行态势感知。我们的算法采用实时跟踪信息,并在飞行中学习运动模式模型,使模型能够很好地适应不断变化的情况,同时保持高水平的性能。不断改进的模型,由并发增量学习产生,用于评估基于当前运动状态的血管的行为模式。在事件级别,学习提供了检测(和警报)异常行为的能力。在更高的(事件间)级别上,学习可以在预定义的时间范围内预测未来船舶的位置。预测还可用于对异常行为发出警报。学习是特定于环境的,并且发生在多个层面上:例如,对于单个血管以及血管类别。介绍了该学习系统的特点和性能
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Associative Learning of Vessel Motion Patterns for Maritime Situation Awareness
Neurobiologically inspired algorithms have been developed to continuously learn behavioral patterns at a variety of conceptual, spatial, and temporal levels. In this paper, we outline our use of these algorithms for situation awareness in the maritime domain. Our algorithms take real-time tracking information and learn motion pattern models on-the-fly, enabling the models to adapt well to evolving situations while maintaining high levels of performance. The constantly refined models, resulting from concurrent incremental learning, are used to evaluate the behavior patterns of vessels based on their present motion states. At the event level, learning provides the capability to detect (and alert) upon anomalous behavior. At a higher (inter-event) level, learning enables predictions, over pre-defined time horizons, to be made about future vessel location. Predictions can also be used to alert on anomalous behavior. Learning is context-specific and occurs at multiple levels: for example, for individual vessels as well as classes of vessels. Features and performance of our learning system using recorded data are described
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