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Characterizing the semantic information loss between geospatial sensors and geospatial information systems (GIS)

机译:表征地理空间传感器和地理空间信息系统(GIS)之间的语义信息丢失

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Geospatial Information Systems (GIS) collect, integrate, store, edit, analyze, share, and display geographic information. Naturally, GIS analysts rely on external data coming from disparate sensors to associate the sensor content (e.g. imagery) with relational databases. Inherently, these GIS sensors present differences in their data structures, labelling, ontologies, and resolution. Given different data structures, information may be lost in the transfer of information, alignment, and association of related context, which yields uncertainty in the meaning of the conveyed information. Ontology alignment typically consists of manual operations from users with different experiences and understandings and limited reporting is conducted in the quality of mappings. To assist the International Organization for Standards (ISO) in development of information quality assessment, we propose an approach using information theory for semantic uncertainty analysis. Information theory has widely been adopted in communications and provides uncertainty assessment for quality of service (QOS) analysis. Quality of information (QOI) or Information Quality (IQ) definitions for semantic assessment can be used to bridge the gap between ontology (semantic) uncertainty alignment and information theory (symbolic) analysis. Utilizing a measure of semantic information loss, analysts can improve the information fusion process, predict data needs, and appropriately understand the GIS product. This paper aims at developing a semantic information loss measure based on information theory relating GIS sensor processing uncertainties and GIS analyst syntactic associations. A maritime domain situational awareness example with waterway semantic labels is shown to demonstrate semantic information loss
机译:地理空间信息系统(GIS)收集,集成,存储,编辑,分析,共享和显示地理信息。自然地,GIS分析人员依靠来自不同传感器的外部数据将传感器内容(例如图像)与关系数据库相关联。这些GIS传感器固有地在数据结构,标签,本体和分辨率方面存在差异。给定不同的数据结构,信息可能会在信息的传递,对齐和相关上下文的关联中丢失,从而导致所传达信息的含义不确定。本体对齐通常包括来自具有不同经验和理解的用户的手动操作,并且以映射质量进行有限的报告。为了帮助国际标准组织(ISO)开展信息质量评估,我们提出了一种使用信息论进行语义不确定性分析的方法。信息理论已在通信中被广泛采用,并为服务质量(QOS)分析提供不确定性评估。用于语义评估的信息质量(QOI)或信息质量(IQ)定义可用于弥补本体(语义)不确定性对齐和信息理论(符号)分析之间的差距。利用语义信息丢失的一种度量,分析人员可以改善信息融合过程,预测数据需求并适当地了解GIS产品。本文旨在基于信息理论开发一种语义信息丢失度量,该信息理论涉及GIS传感器处理的不确定性和GIS分析人员的句法关联。给出了带有航道语义标签的海域态势感知示例,以证明语义信息的丢失

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