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Finding behavioral patterns of UAV operators using Multichannel Hidden Markov Models

机译:使用多通道隐马尔可夫模型寻找无人机操作员的行为模式

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In recent years Unmanned Aerial Vehicles (UAVs) have become a very popular topic in many different research fields and industrial applications. These technologies, and the related industries, are expected to grow dramatically by 2020. Although the systems designed to control UAVs are increasingly autonomous, the role of UAV operators is still a critical aspect that guarantee the mission success, specially when one single operator must supervise multiple UAVs. For this reason, much effort from different areas has been put into the study and analysis of the operator behavior. This work presents a new method to find and model behavioral patterns among UAV operators in a lightweight multi-UAV simulation environment. Our approach is based on MultiChannel (or Multivariate) Hidden Markov Models (MC-HMMs), which allow to gather in the same model parallel data sequences, such as the combination of operator interactions and mission events. The different steps for preprocessing data, creating, selecting and analyzing the model are described, and an experiment with inexperienced operators has been carried out to show how a descriptive model of behaviour can be generated using this modelling technique.
机译:近年来,无人飞行器(UAV)已成为许多不同研究领域和工业应用中非常受欢迎的主题。预计到2020年,这些技术以及相关行业将急剧增长。尽管用于控制无人机的系统越来越具有自主性,但无人机操作员的角色仍然是确保任务成功的关键方面,特别是当一个操作员必须进行监督时多架无人机。因此,已经对操作员行为的研究和分析投入了来自不同领域的大量精力。这项工作提出了一种在轻型多UAV仿真环境中的无人机操作员之间寻找和建模行为模式的新方法。我们的方法基于多通道(或多变量)隐马尔可夫模型(MC-HMM),该模型允许在同一模型中收集并行数据序列,例如操作员交互和任务事件的组合。描述了数据预处理,创建,选择和分析模型的不同步骤,并进行了无经验操作员的实验,以显示如何使用此建模技术生成行为的描述性模型。

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