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Detecting Pilot's Engagement Using fNIRS Connectivity Features in an Automated vs. Manual Landing Scenario

机译:在自动与手动着陆方案中使用fNIRS连接功能检测飞行员的参与

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Monitoring pilot's mental states is a relevant approach to mitigate human error and enhance human machine interaction. A promising brain imaging technique to perform such a continuous measure of human mental state under ecological settings is Functional Near-InfraRed Spectroscopy (fNIRS). However, to our knowledge no study has yet assessed the potential of fNIRS connectivity metrics as long as passive Brain Computer Interfaces (BCI) are concerned. Therefore, we designed an experimental scenario in a realistic simulator in which 12 pilots had to perform landings under two contrasted levels of engagement (manual vs. automated). The collected data were used to benchmark the performance of classical oxygenation features (i.e., Average, Peak, Variance, Skewness, Kurtosis, Area Under the Curve, and Slope) and connectivity features (i.e., Covariance, Pearson's, and Spearman's Correlation, Spectral Coherence, and Wavelet Coherence) to discriminate these two landing conditions. Classification performance was obtained by using a shrinkage Linear Discriminant Analysis (sLDA) and a stratified cross validation using each feature alone or by combining them. Our findings disclosed that the connectivity features performed significantly better than the classical concentration metrics with a higher accuracy for the wavelet coherence (average: 65.3/59.9 %, min: 45.3/45.0, max: 80.5/74.7 computed for HbO/HbR signals respectively). A maximum classification performance was obtained by combining the area under the curve with the wavelet coherence (average: 66.9/61.6 %, min: 57.3/44.8, max: 80.0/81.3 computed for HbO/HbR signals respectively). In a general manner all connectivity measures allowed an efficient classification when computed over HbO signals. Those promising results provide methodological cues for further implementation of fNIRS-based passive BCIs.
机译:监视飞行员的心理状态是减少人为错误并增强人机交互性的一种相关方法。功能近红外光谱(fNIRS)是一种在生态环境下能够连续测量人类心理状态的有前途的脑成像技术。然而,据我们所知,只要涉及被动脑计算机接口(BCI),尚无研究评估fNIRS连接性指标的潜力。因此,我们在现实的仿真器中设计了一个实验场景,其中12名飞行员必须在两种对比的参与水平(手动与自动)下进行着陆。收集的数据用于基准测试经典氧化功能(例如,平均值,峰,方差,偏度,峰度,曲线下面积和斜率)和连通性(例如协方差,皮尔逊和Spearman的相关性,光谱相干性)的性能。 ,以及Wavelet Coherence)来区分这两个着陆条件。通过使用收缩线性判别分析(sLDA)和单独使用每个功能或将它们组合在一起进行分层交叉验证,可以获得分类性能。我们的研究结果表明,连通性功能的性能明显优于经典浓度指标,并且具有更高的小波相干准确度(分别针对HbO / HbR信号计算的平均值:65.3 / 59.9%,最小值:45.3 / 45.0,最大值:80.5 / 74.7) 。通过将曲线下的面积与小波相干性相结合,可获得最大的分类性能(分别针对HbO / HbR信号计算出的平均值:66.9 / 61.6%,最小值:57.3 / 44.8,最大值:80.0 / 81.3)。通常,所有连接性措施在通过HbO信号进行计算时都可以进行有效的分类。这些有希望的结果为进一步实施基于fNIRS的被动BCI提供了方法学线索。

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