Roy Raphaëlle N, Bonnet Stéphane, Charbonnier Sylvie, Campagne Aurélie
Université Grenoble AlpesGrenoble, France; Gipsa-Lab, Centre National de la Recherche ScientifiqueGrenoble, France.
Université Grenoble AlpesGrenoble, France; CEA LETIGrenoble, France.
Front Hum Neurosci. 2016 Oct 13;10:519. doi: 10.3389/fnhum.2016.00519. eCollection 2016.
Mental workload is a mental state that is currently one of the main research focuses in neuroergonomics. It can notably be estimated using measurements in electroencephalography (EEG), a method that allows for direct mental state assessment. Auditory probes can be used to elicit event-related potentials (ERPs) that are modulated by workload. Although, some papers do report ERP modulations due to workload using attended or ignored probes, to our knowledge there is no literature regarding effective workload classification based on ignored auditory probes. In this paper, in order to efficiently estimate workload, we advocate for the use of such ignored auditory probes in a single-stimulus paradigm and a signal processing chain that includes a spatial filtering step. The effectiveness of this approach is demonstrated on data acquired from participants that performed the Multi-Attribute Task Battery - II. They carried out this task during two 10-min blocks. Each block corresponded to a workload condition that was pseudorandomly assigned. The easy condition consisted of two monitoring tasks performed in parallel, and the difficult one consisted of those two tasks with an additional plane driving task. Infrequent auditory probes were presented during the tasks and the participants were asked to ignore them. The EEG data were denoised and the probes' ERPs were extracted and spatially filtered using a canonical correlation analysis. Next, binary classification was performed using a Fisher LDA and a fivefold cross-validation procedure. Our method allowed for a very high estimation performance with a classification accuracy above 80% for every participant, and minimal intrusiveness thanks to the use of a single-stimulus paradigm. Therefore, this study paves the way to the efficient use of ERPs for mental state monitoring in close to real-life settings and contributes toward the development of adaptive user interfaces.
心理负荷是一种心理状态,目前是神经工效学的主要研究重点之一。它尤其可以通过脑电图(EEG)测量来估计,EEG是一种能够直接评估心理状态的方法。听觉探针可用于诱发由负荷调制的事件相关电位(ERP)。尽管有些论文确实报道了使用被关注或被忽略的探针时因负荷导致的ERP调制,但据我们所知,尚无关于基于被忽略的听觉探针进行有效负荷分类的文献。在本文中,为了有效地估计负荷,我们提倡在单刺激范式和包括空间滤波步骤的信号处理链中使用这种被忽略的听觉探针。这种方法的有效性在从执行多属性任务组电池-II的参与者获取的数据上得到了证明。他们在两个10分钟的时间段内执行该任务。每个时间段对应一个伪随机分配的负荷条件。轻松条件包括并行执行的两项监测任务,而困难条件包括这两项任务以及一项额外的飞机驾驶任务。在任务期间呈现不频繁的听觉探针,并要求参与者忽略它们。对EEG数据进行去噪,提取探针的ERP并使用典型相关分析进行空间滤波。接下来,使用Fisher线性判别分析和五重交叉验证程序进行二元分类。我们的方法具有非常高的估计性能,每个参与者的分类准确率都高于80%,并且由于使用了单刺激范式,干扰最小。因此,本研究为在接近现实生活的环境中有效利用ERP进行心理状态监测铺平了道路,并有助于自适应用户界面的开发。