Supporting Agile User Fusion Analytics through Human-Agent Knowledge Fusion

Dave Braines, A. Preece, Colin Roberts, E. Blasch
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引用次数: 6

Abstract

For many types of data and information fusion, input from human users is essential, both in terms of defining or adjusting the processing steps, as well as in interacting with, understanding, and communicating the results. In many cases, information fusion should increase understanding for the human user(s) working as part of a team of interacting agents, taking into account the needs of each user type, and the factors that might affect individual and team performance. This paper focuses on the decision support that could be provided to users, by presenting a candidate environment to support comprehensive information fusion and exchange in support of human-agent knowledge fusion (HAKF). The paper outlines two distinct HAKF use cases of (1) foraging data for open source intelligence analysis, and (2) sensemaking fusion from sensors and machine agents, using Cogni-sketch. In the first use case, a traditional open source intelligence gathering exercise demonstrates information gathered from multiple sources and maps it to a common model of sensemaking. The second use case shows machine-led activities including fusion of machine vision and object identification, and the utilization of human-led semantic definitions of events and situations in support of sensemaking.
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通过人-代理知识融合支持敏捷用户融合分析
对于许多类型的数据和信息融合,无论是在定义或调整处理步骤方面,还是在与结果进行交互、理解和交流方面,来自人类用户的输入都是必不可少的。在许多情况下,信息融合应该增加对作为交互代理团队的一部分工作的人类用户的理解,同时考虑到每种用户类型的需求以及可能影响个人和团队绩效的因素。本文通过提出一个支持全面信息融合和交换的候选环境,以支持人类智能体知识融合(HAKF),重点研究可以为用户提供的决策支持。本文概述了两个不同的HAKF用例:(1)为开源智能分析采集数据,以及(2)使用cognitive -sketch从传感器和机器代理中进行语义融合。在第一个用例中,传统的开源情报收集练习演示了从多个来源收集的信息,并将其映射到一个通用的语义模型。第二个用例展示了机器主导的活动,包括机器视觉和对象识别的融合,以及利用人类主导的事件和情况的语义定义来支持语义构建。
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