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The Situation Awareness Window: a Hidden Markov Model for analyzing Maritime Surveillance missions

机译:情况意识窗口:一个隐藏的马尔可夫模型,用于分析海事监测任务

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In recent years, the use of Maritime Surveillance (MS) systems has increased in both defense and civilian domains. A demanding workload is placed upon operators of these systems, including the need to perform simultaneous information fusion from a number of sources to enable rapid decision throughput based upon Situation Awareness (SA). We have developed a method to objectively encode, summarize, and analyze airborne MS crew activities to gain insights into what is attended to in the execution of surveillance requirements. We label this method the "Situation Awareness Window" (SAW), which integrates sensor and tactical information with kinematics to define key attention and decision components of the operators that emerge over the surveillance mission. The SAW is defined with respect to the objects that are surveyed, the surveillance activities, and their chronological order. A SAW Hidden Markov Model (SAW-HMM) operates upon the surveillance mission activity encoder, resulting in a probabilistic relationship between the attention switching across sensor types and surveyed objects over the entire mission. That is, to implement the SAW-HMM we encoded the selection of sensors and surveillance decisions using a novel "encoder-interface" that allows users to probe many different features, observations, and states of a given mission. Ultimately the SAW will provide automated, objective, and insightful post mission debriefing technologies for operators and mission planners to encapsulate task demands and SA features over the mission.
机译:近年来,防御和民用域名使用海上监测(MS)系统。苛刻的工作量被放置在这些系统的运营商上,包括需要从许多源执行同时信息融合,以实现基于情况感知(SA)的快速决策吞吐量。我们制定了一种客观地编码,总结和分析空中MS机组活动的方法,以获得对在执行监督要求的情况下进入的内容。我们将此方法标记该方法“情况感知窗口”(SAW),将传感器和战术信息与运动学集成,以定义在监控任务中出现的操作员的关键关注和决策组件。该锯是针对被调查的对象,监测活动和时间顺序定义的锯。锯隐马尔可夫模型(SAW-HMM)在监控任务活动编码器上运行,导致在整个任务中关注传感器类型和调查对象之间的注意力切换之间的概率关系。也就是说,为了实现SAW-HMM,我们使用新颖的“编码器接口”编码了传感器和监视决策的选择,允许用户探测许多不同的特征,观察和给定任务的状态。最终,锯将为运营商和特派团规划者提供自动化,目标和富有洞察力的汇报技术,以将任务需求和特派团的特征封装。

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