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Sensitive, Diagnostic and Multifaceted Mental Workload Classifier (PHYSIOPRINT)

机译:敏感,诊断和多方面的心理工作量分类器(PHYSIOPRINT)

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Mental workload is difficult to quantify because it results from an interplay of the objective task load, ambient and internal distractions, capacity of mental resources, and strategy of their utilization. Furthermore, different types of mental resources are mobilized to a different degree in different tasks even if their perceived difficulty is the same. Thus, an ideal mental workload measure needs to quantify the degree of utilization of different mental resources in addition to providing a single global workload measure. Here we present a novel assessment tool (called PHYSIOPRINT) that derives workload measures in real time from multiple physiological signals (EEG, ECG, EOG, EMG). PHYSIOPRINT is modeled after the theoretical IMPRINT workload model developed by the US Army that recognizes seven different workload types: auditory, visual, cognitive, speech, tactile, fine motor and gross motor workload. Preliminary investigation on 25 healthy volunteers proved feasibility of the concept and defined the high level system architecture. The classifier was trained on the EEG and ECG data acquired during tasks chosen to represent the key anchors on the respective seven workload scales. The trained model was then validated on realistic driving simulator. The classification accuracy was 88.7 % for speech, 86.6 % for fine motor, 89.3 % for gross motor, 75.8 % for auditory, 76.7 % for visual, and 72.5 % for cognitive workload. By August of 2015, an extended validation of the model will be completed on over 100 volunteers in realistically simulated environments (driving and flight simulator), as well as in a real military-relevant environment (fully instrumented HMMWV).
机译:心理工作量很难量化,因为它是由目标任务负荷,环境和内部干扰,智力资源的容量以及其利用策略的相互作用共同产生的。此外,即使他们感知的困难相同,在不同的任务中也会以不同的程度调动不同类型的智力资源。因此,理想的心理工作量测度除了提供单个全局工作量测度之外,还需要量化不同心理资源的利用程度。在这里,我们介绍了一种新颖的评估工具(称为PHYSIOPRINT),该工具可以从多个生理信号(EEG,ECG,EOG,EMG)实时导出工作量度量。 PHYSIOPRINT是根据美国陆军开发的理论IMPRINT工作量模型建模的,该模型可以识别七个不同的工作量类型:听觉,视觉,认知,言语,触觉,精细运动和总运动量。对25名健康志愿者的初步调查证明了该概念的可行性,并定义了高级系统架构。分类器接受了在选择的任务期间获得的脑电图和心电图数据的训练,这些任务被选为代表相应七个工作量表上的关键锚点。然后,在现实驾驶模拟器上验证训练后的模型。语音的分类准确度为88.7%,精细运动的分类准确度为86.6%,大运动的分类准确度为89.3%,听觉为75.8%,视觉为76.7%,认知工作量为72.5%。到2015年8月,该模型的扩展验证将在逼真的模拟环境(驾驶和飞行模拟器)以及与军事相关的实际环境(配备完善的HMMWV)中,对100多名志愿者完成。

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