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EEG Correlates of Difficulty Levels in Dynamical Transitions of Simulated Flying and Mapping Tasks

机译:EEG与模拟飞行和映射任务的动态转换中的难度水平相关联

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摘要

Decoding the subjective perception of task difficulty may help improve operator performance, i.e., automatically optimize the task difficulty level. Here, we aim to decode a compound of cognitive states that covaries with the task difficulty level. We designed a protocol composed of two different subtasks, flying and visual recognition, to induce different difficulty levels. We first showed that electroencephalography (EEG) signals can be a reliable source for discriminating different compound states. To gain insight into the underlying components in the compound states, we examined the attentional index and engagement index as in our previous study. We showed that, first, attention and engagement are essential components but fail to provide the best accuracy, and, second, our model is consistent with our previous study, which means that lateralized modulations in the $lpha$ bands are representative of the flying task. We also analyzed a practical issue in the design of adaptive human-machine interaction (HMI) systems, namely, the latency of changes in the user's compound state. We hypothesized that the EEG correlates of the task difficulty level do not instantaneously reflect the changes in the task difficulty. We validated the hypothesis by measuring the time required for our decoders to provide stable accuracy after the task changed. This amount of time, or latency, could be as high as ten seconds. The results suggest that the latency of changes in the user's compound state between different tasks is a factor that should be taken into account when building adaptive HMI systems.
机译:解码任务难度的主观感知可能有助于改善操作员性能,即,自动优化任务难度级别。在这里,我们的目标是解码认知状态的化合物,该化合物与任务难度级别的协变量。我们设计了由两个不同的子任务,飞行和视觉识别组成的协议,以引起不同的难度级别。我们首先表明脑电图(EEG)信号可以是用于区分不同化合物状态的可靠源。要深入了解复合国家中的潜在组成部分,我们将注意力指数和参与指数审查如我们以前的研究中。我们展示了,首先,关注和参与是必不可少的组件,但未能提供最佳准确性,而且,我们的模型与我们以前的研究一致,这意味着$ Alpha $乐队中的横向化调制是飞行的代表任务。我们还在适应性人机交互(HMI)系统设计中分析了一个实际问题,即用户复合状态的变化的潜伏期。我们假设任务难度级别的EEG相关性不会瞬间反映任务难度的变化。我们通过测量我们解码器在任务改变后提供稳定准确性的时间来验证假设。此时间或延迟可能高达十秒钟。结果表明,用户在不同任务之间的复合状态的变化的延迟是在构建自适应HMI系统时应考虑的因素。

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