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A Comparison of Performance and Psychophysiological Classification of Complex Task Performance

机译:复杂任务表现性能与心理生理分类的比较

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Psychophysiologically guided classifiers have been used to distinguish between low and high mental workload conditions. Prior studies used cognitive tasks that were quite different in terms of the cognitive demands placed on the operator. It is not clear if these classifiers can discriminate between tasks that are more similar in cognitive demand. A complex uninhabited aerial vehicle simulator provided conditions that were similar but placed emphasis on different aspects of the task. Performance and subjective workload data could only discriminate between the baseline task and the three more difficult tasks. Artificial neural networks (ANN) that used psychophysiological data were able to discriminate among the four tasks with a mean accuracy of 83.4%. ANNs that used a larger number of features and saliency analysis produced higher classification accuracies than ANNs using fewer features. It appears that when comparing cognitively similar complex tasks, given sufficient information, ANNs are capable of finer discrimination than performance and subjective workload measures.
机译:精神生理学引导的分类器已被用于区分低心理工作量的条件。先前的研究使用了在操作员上的认知需求方面完全不同的认知任务。如果这些分类器可以区分在认知需求中更类似的任务之间,则不清楚。复杂的无人吸引力的空中车辆模拟器提供了类似的条件,而是放置在任务的不同方面。性能和主观工作负载数据只能歧视基线任务和三个更困难的任务。使用的人工神经网络(ANN)使用的心理生理数据能够在四项任务中区分,其平均准确性为83.4%。使用较少的特征,使用更多特征和显着性分析的ANNS产生了比ANN更高的分类精度。看来,当比较认知类似的复杂任务时,给定足够的信息时,ANNS能够比性能和主观工作负载措施更精细辨别。

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