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Evaluation of Normal Model Visualization for Anomaly Detection in Maritime Traffic

机译:海上交通异常检测的正常模型可视化评估

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摘要

Monitoring dynamic objects in surveillance applications is normally a demanding activity for operators, not only because of the complexity and high dimensionality of the data but also because of other factors like time constraints and uncertainty. Timely detection of anomalous objects or situations that need further investigation may reduce operators' cognitive load. Surveillance applications may include anomaly detection capabilities, but their use is not widespread, as they usually generate a high number of false alarms, they do not provide appropriate cognitive support for operators, and their outcomes can be difficult to comprehend and trust. Visual analytics can bridge the gap between computational and human approaches to detecting anomalous behavior in traffic data, making this process more transparent. As a step toward this goal of transparency, this article presents an evaluation that assesses whether visualizations of normal behavioral models of vessel traffic support two of the main analytical tasks specified during our field work in maritime control centers. The evaluation combines quantitative and qualitative usability assessments. The quantitative evaluation, which was carried out with a proof-of-concept prototype, reveals that participants who used the visualization of normal behavioral models outperformed the group that did not do so. The qualitative assessment shows that domain experts have a positive attitude toward the provision of automatic support and the visualization of normal behavioral models, as these aids may reduce reaction time and increase trust in and comprehensibility of the system.
机译:在监视应用程序中监视动态对象通常是操作员的一项艰巨任务,这不仅是因为数据的复杂性和高维性,还因为其他因素(例如时间限制和不确定性)。及时发现异常物体或需要进一步调查的情况可能会减轻操作员的认知负担。监视应用程序可能包括异常检测功能,但是它们的使用并不广泛,因为它们通常会产生大量的虚假警报,它们无法为操作员提供适当的认知支持,并且其结果可能难以理解和信任。视觉分析可以弥合检测交通数据中异常行为的计算方法与人工方法之间的鸿沟,从而使该过程更加透明。为了实现这一透明目标,本文提出了一项评估,该评估评估了船舶交通正常行为模型的可视化是否支持我们在海事控制中心进行的现场工作中指定的两个主要分析任务。该评估结合了定量和定性的可用性评估。使用概念验证原型进行的定量评估表明,使用正常行为模型可视化的参与者的表现要好于没有这样做的小组。定性评估表明,领域专家对自动支持的提供和正常行为模型的可视化持积极态度,因为这些帮助可以减少反应时间并增加对系统的信任和可理解性。

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