首页> 外文会议>Collaborative Technologies and Systems, 2009. CTS '09 >Situation awareness via abductive reasoning from Semantic Sensor data: A preliminary report
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Situation awareness via abductive reasoning from Semantic Sensor data: A preliminary report

机译:通过语义传感器数据的归纳推理来感知情况:初步报告

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Semantic sensor Web enhances raw sensor data with spatial, temporal, and thematic annotations to enable high-level reasoning. In this paper, we explore how abductive reasoning framework can benefit formalization and interpretation of sensor data to garner situation awareness. Specifically, we show how abductive logic programming techniques, in conjunction with symbolic knowledge rules, can be used to detect inconsistent sensor data and to generate human accessible description of the state of the world from consistent subset of the sensor data. We also show how trust/belief information can be incorporated into the interpreter to enhance reliability. For concreteness, we formalize weather domain and develop a meta-interpreter in Prolog to explain weather data. This preliminary work illustrates synthesis of high-level, reliable information for situation awareness by querying low-level sensor data.
机译:语义传感器Web通过空间,时间和主题注释增强了原始传感器数据,以实现高级推理。在本文中,我们探讨了绑架推理框架如何能够有益于传感器数据的形式化和解释,以获取态势感知。具体来说,我们展示了如何将归纳逻辑编程技术与符号知识规则结合起来,用于检测不一致的传感器数据并从传感器数据的一致子集生成人类可访问的世界状态描述。我们还将展示如何将信任/信仰信息合并到解释器中以增强可靠性。具体而言,我们将天气域形式化,并在Prolog中开发一个元解释器来解释天气数据。这项初步工作说明了如何通过查询低级传感器数据来综合高级,可靠的信息,以实现态势感知。

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