语义信息融合增强监视场景中的态势感知

W. Müller, A. Kuwertz, D. Mühlenberg, J. Sander
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引用次数: 6

摘要

近年来,无人机系统(UAS)用于安全相关目的的使用有所增加,从军事应用到不同的民用保护领域。部署无人机系统可以支持安全部队实现增强的态势感知。然而,为了向情景图像提供有用的输入,无人机系统提供的传感器数据必须与来自其他来源的有关区域和感兴趣对象的信息集成。本研究的目的是设计一个将概率信息处理与逻辑和概率推理相结合的高级数据融合组件,以支持人类操作员的态势感知,提高他们做出高效决策的能力。为此,提出了一种基于ISR(情报、监视和侦察)分析体系结构(ISR- aa)[1]的融合组件,该组件结合了用于信息集成的面向对象世界模型(OOWM)、用于检测关键事件的表达性知识模型和推理组件。提出了将OOWM中包含的信息转换为用于逻辑推理的本体或用于概率推理的马尔可夫逻辑网络的方法。
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Semantic information fusion to enhance situational awareness in surveillance scenarios
In recent years, the usage of unmanned aircraft systems (UAS) for security-related purposes has increased, ranging from military applications to different areas of civil protection. The deployment of UAS can support security forces in achieving an enhanced situational awareness. However, in order to provide useful input to a situational picture, sensor data provided by UAS has to be integrated with information about the area and objects of interest from other sources. The aim of this study is to design a high-level data fusion component combining probabilistic information processing with logical and probabilistic reasoning, to support human operators in their situational awareness and improving their capabilities for making efficient and effective decisions. To this end, a fusion component based on the ISR (Intelligence, Surveillance and Reconnaissance) Analytics Architecture (ISR-AA) [1] is presented, incorporating an object-oriented world model (OOWM) for information integration, an expressive knowledge model and a reasoning component for detection of critical events. Approaches for translating the information contained in the OOWM into either an ontology for logical reasoning or a Markov logic network for probabilistic reasoning are presented.
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