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Using Context to Optimize a Functional State Estimation Engine in Unmanned Aircraft System Operations

机译:使用上下文优化无人机系统运行中的功能状态估计引擎

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As UAS operations continue to expand, the ability to monitor real-time cognitive states of human operators would be a valuable asset. Although great strides have been made toward this capability using physiological signals, the inherent noisiness of these data hinders its readiness for operational deployment. We theorize the addition of contextual data alongside physiological signals could improve the accuracy of cognitive state classifiers. In this paper, we review a cognitive workload model development effort conducted in a simulated UAS task environment at the Air Force Research Laboratory (AFRL). Real-time workload model classifiers were trained using three levels of physiological data inputs both with and without context added. Following the evaluation of each classifier using four model evaluation metrics, we conclude that by adding contextual data to physiological-based models, we improved the ability to reliably measure real-time cognitive workload in our UAS operations test case.
机译:随着无人机系统操作的不断扩展,监视人类操作员的实时认知状态的能力将是一项宝贵的资产。尽管使用生理信号朝着这种能力迈进了很大的步伐,但是这些数据固有的噪音妨碍了其准备好进行操作部署。我们理论上将上下文数据与生理信号一起添加可以提高认知状态分类器的准确性。在本文中,我们回顾了在空军研究实验室(AFRL)的模拟UAS任务环境中进行的认知工作量模型开发工作。实时工作量模型分类器使用添加和不添加上下文的三个级别的生理数据输入进行训练。在使用四个模型评估指标对每个分类器进行评估之后,我们得出结论,通过将上下文数据添加到基于生理的模型中,我们提高了在我们的UAS操作测试案例中可靠地测量实时认知工作量的能力。

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