Generic application driven situation awareness via ontological situation recognition

Ryan Pearson, M. Donnelly, Jun Liu, L. Galway
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引用次数: 6

Abstract

Situation recognition and interpretation based on multisensor data is an important research challenge in the situation awareness field. Existing research has developed techniques concerned with accurate and reliable situation recognition via sensor driven detection of events in an environment. However, real world applications of situation awareness require perception of a situation's meaning, knowledge of expected changes and their relevance to environments inhabitants. Recognizing the significance and implications of situations in complex real world scenarios is challenging, but is essential for designing applications for real world environments. This paper presents a novel knowledge driven approach to situation awareness. Within it we extend established data driven methods of situation recognition by utilizing domain knowledge across the entire situation life cycle. We utilize ontologies for explicit representation of environmental and application context as well as situation modeling. We explore the link between low-level environment context and high-level application knowledge using a generic situation model. We exploit semantic reasoning to provide situation recognition and interpretation and demonstrate delivery of application oriented situation awareness in a smart environment. Finally, a case study-based scenario is utilized in order to demonstrate the system's operation.
通过本体情境识别的通用应用驱动的情境感知
基于多传感器数据的态势识别与解释是态势感知领域的一个重要研究课题。现有的研究已经开发出了通过传感器驱动的环境事件检测来准确可靠地识别环境的技术。然而,在现实世界中,情境感知的应用需要感知情境的意义,了解预期的变化及其与环境居民的相关性。认识到复杂的现实世界场景中情况的重要性和含义是具有挑战性的,但对于为现实世界环境设计应用程序是必不可少的。本文提出了一种新的基于知识驱动的态势感知方法。在该模型中,我们通过利用跨整个情况生命周期的领域知识,扩展了已建立的数据驱动的情况识别方法。我们利用本体来显式表示环境和应用程序上下文以及情景建模。我们使用通用情景模型探索低级环境上下文和高级应用程序知识之间的联系。我们利用语义推理来提供情境识别和解释,并演示在智能环境中提供面向应用的情境感知。最后,利用基于案例研究的场景来演示系统的操作。
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