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Physiological Data Models to Understand the Effectiveness of Drone Operation Training in Immersive Virtual Reality

机译:生理数据模型,了解沉浸式虚拟现实中无人机操作培训的有效性

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Data collection using unmanned aerial vehicles (UAVs) in construction and heavy civil projects is subject to compliance with strict operational rules and safety regulations. Both the US Federal Aviation Administration (FAA) and the European Union Aviation Safety Agency (EASA) require drone operators to keep the drone in sight and avoid flying near people or other objects. From the perspective of the operator, remaining in standing or sitting position while always looking up to monitor the drone movements can cause awkward body postures, stress, and fatigue. Coupled with the mental load resulting from delegated tasks, this could potentially put the drone mission, people, and property at risk. This research investigates the reliability of using the drone operator's physiological indexes and self-assessments to predict performance, mental workload (MWL), and stress in immersive virtual reality training and outdoor deployment. A user study was carried out to collect physiological data using wearable devices and design general population and group-specific prediction models. Results show that in 83% of cases, these models can predict performance, MWL, and stress levels accurately or within one level. This paper contributes to the core body of knowledge by providing a scalable approach to objectively quantifying performance, MWL, and stress that can be used to design adaptive training systems for drone operators. Personalized models of physiological signals are presented as reliable indexes to describing the outcome of interest. Scalability is achieved through the application of generalizable machine learning models that learn the interdependencies between physiological and self-assessment inputs and their association with corresponding outcomes.
机译:建筑和重型民用项目中使用无人驾驶航空公司(无人机)的数据收集符合严格的运营规则和安全规定。美国联邦航空管理局(FAA)和欧盟航空安全机构(EASA)都需要无人驾驶经营者在视线中保持无人机,避免在人们附近飞行或其他物体。从操作员的角度来看,留在站立或坐姿同时总是抬头监测无人机运动会导致尴尬的身体姿势,压力和疲劳。再加上由委派任务产生的精神载荷,这可能会使无人机使命,人们和财产放在风险。本研究调查了使用无人机运营商的生理指标和自我评估来预测性能,心理工作量(MWL)和沉浸式虚拟现实培训和户外部署的压力的可靠性。进行用户学习,以使用可穿戴设备和设计一般人群和群体特定预测模型来收集生理数据。结果表明,在83%的情况下,这些模型可以准确地或在一个级别内预测性能,MWL和应力水平。本文通过提供可扩展的方法来造成可伸缩的方法来造成可扩展的方法,以客观地定量性能,MWL和压力来设计可用于为无人机运营商设计自适应训练系统的方法。个性化的生理信号模型作为描述兴趣结果的可靠指标呈现。通过应用广泛的机器学习模型来实现可扩展性,这些模型学习生理和自我评估输入与其与相应结果之间的关联之间的相互依赖性。

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