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Ontologies for probabilistic situation assessment in the maritime domain

机译:海域概率情况评估的本体

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摘要

In the maritime domain, surveillance systems are used to track vessels in a certain area of interest. The resulting vessel tracks are then displayed in a dynamic map. However, the interpretation of the dynamic environment, i.e., the situation assessment (SA) process, is still done by human experts. Several methods exist that can be used for automatic SA, but often they are based on machine learning algorithms and do not include the knowledge of the decision maker. In this article, we describe how expert knowledge can be used to determine models for automatic SA. The knowledge about situations of interest is modeled as an ontology, which can be transformed into a dynamic Bayesian network (DBN). The main challenge of this transformation is the determination of the structure and the parameter settings of the DBN. The resulting DBN can be connected to real-time vessel tracks and is able to estimate the existence of the situation of interest in every time step.
机译:在海上域中,监控系统用于跟踪某些感兴趣领域的船只。然后将得到的血管轨道显示在动态地图中。然而,对动态环境的解释,即情况评估(SA)进程仍由人类专家仍然由人类专家完成。存在可用于自动SA的几种方法,但通常它们基于机器学习算法,并且不包括决策者的知识。在本文中,我们描述了专家知识如何用于确定自动SA模型。关于感兴趣情况的知识被建模为本体论,可以转化为动态贝叶斯网络(DBN)。该转换的主要挑战是确定DBN的结构和参数设置。得到的DBN可以连接到实时血管轨道,并且能够估计每次步骤中感兴趣的情况。

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