Find-to-Forecast Process: An Automated Methodology for Situation Assessment

K. Bimson, Ahmad Slim, G. Heileman
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Abstract

The ability to identify, process, and comprehend the essential elements of information associated with a given operational environment can be used to reason about how the actors within the environment can best respond. This is often referred to as "situation assessment," the end state of which is "situation awareness," which can be simply defined as "knowing what is going on around you." Taken together, these are important fields of study concerned with perception of the environment critical to decision-makers in many complex, dynamic domains, including aviation, military command and control, and emergency management. The primary goal of our research is to identify some of the main technical challenges associated with automated situation assessment, in general, and to propose an information processing methodology that meets those challenges, which we call Find-to-Forecast (F2F). The F2F framework supports accessing heterogeneous information (structured and unstructured), which is normalized into a standard RDF representation. Next, the F2F framework identifies mission-relevant information elements, filtering out irrelevant (or low priority) information, fusing the remaining relevant information. The next steps in the F2F process involve focusing operator attention on essential elements of mission information, and reasoning over fused, relevant information to forecast potential courses of action based on the evolving situation, changing data, and uncertain knowledge. This paper provides an overview of the overall F2F methodology, to provide context, followed by a more detailed consideration of the "focus" algorithm, which uses contextual semantics to evaluate the value of new information relative to an operator's situational understanding during evolving events.
从发现到预测的过程:一种态势评估的自动化方法
识别、处理和理解与给定操作环境相关的信息的基本元素的能力可用于推断环境中的参与者如何最好地响应。这通常被称为“情况评估”,其最终状态是“情况感知”,可以简单地定义为“知道你周围发生了什么”。总的来说,这些都是研究环境感知的重要领域,对许多复杂、动态领域的决策者至关重要,包括航空、军事指挥和控制以及应急管理。我们研究的主要目标是确定与自动情况评估相关的一些主要技术挑战,一般来说,并提出满足这些挑战的信息处理方法,我们称之为发现到预测(F2F)。F2F框架支持访问异构信息(结构化和非结构化),这些信息被标准化为标准RDF表示。接下来,F2F框架识别与任务相关的信息元素,过滤掉不相关(或低优先级)的信息,融合剩余的相关信息。F2F过程的下一步包括将操作员的注意力集中在任务信息的基本要素上,并对融合的相关信息进行推理,以根据不断变化的情况、不断变化的数据和不确定的知识预测潜在的行动路线。本文概述了整个F2F方法,提供了上下文,然后更详细地考虑了“焦点”算法,该算法使用上下文语义来评估相对于操作员在不断发展的事件中的情景理解的新信息的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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