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Recognizing Frustration of Drivers From Face Video Recordings and Brain Activation Measurements With Functional Near-Infrared Spectroscopy

机译:通过功能性近红外光谱从面部视频记录和大脑激活测量中识别驾驶员的沮丧情绪

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摘要

Experiencing frustration while driving can harm cognitive processing, result in aggressive behavior and hence negatively influence driving performance and traffic safety. Being able to automatically detect frustration would allow adaptive driver assistance and automation systems to adequately react to a driver’s frustration and mitigate potential negative consequences. To identify reliable and valid indicators of driver’s frustration, we conducted two driving simulator experiments. In the first experiment, we aimed to reveal facial expressions that indicate frustration in continuous video recordings of the driver’s face taken while driving highly realistic simulator scenarios in which frustrated or non-frustrated emotional states were experienced. An automated analysis of facial expressions combined with multivariate logistic regression classification revealed that frustrated time intervals can be discriminated from non-frustrated ones with accuracy of 62.0% (mean over 30 participants). A further analysis of the facial expressions revealed that frustrated drivers tend to activate muscles in the mouth region (chin raiser, lip pucker, lip pressor). In the second experiment, we measured cortical activation with almost whole-head functional near-infrared spectroscopy (fNIRS) while participants experienced frustrating and non-frustrating driving simulator scenarios. Multivariate logistic regression applied to the fNIRS measurements allowed us to discriminate between frustrated and non-frustrated driving intervals with higher accuracy of 78.1% (mean over 12 participants). Frustrated driving intervals were indicated by increased activation in the inferior frontal, putative premotor and occipito-temporal cortices. Our results show that facial and cortical markers of frustration can be informative for time resolved driver state identification in complex realistic driving situations. The markers derived here can potentially be used as an input for future adaptive driver assistance and automation systems that detect driver frustration and adaptively react to mitigate it.
机译:驾驶时遇到挫折感可能会损害认知过程,导致攻击行为,从而对驾驶性能和交通安全产生负面影响。能够自动检测到挫败感将使自适应驾驶员辅助和自动化系统能够对驾驶员的挫败感做出充分反应,并减轻潜在的负面影响。为了确定驾驶员沮丧的可靠有效指标,我们进行了两次驾驶模拟器实验。在第一个实验中,我们旨在揭示面部表情,这些表情指示在驾驶高度真实的模拟器场景(经历沮丧或不沮丧的情绪状态)时所拍摄的驾驶员面部连续视频记录中的沮丧情绪。对面部表情的自动分析与多元logistic回归分类相结合,发现可以将受挫时间间隔与未受挫时间间隔区分开,准确度为62.0%(平均30名参与者)。对面部表情的进一步分析表明,沮丧的驾驶员倾向于激活嘴部区域的肌肉(下巴抬高器,嘴唇起皱器,嘴唇压迫器)。在第二个实验中,我们使用几乎全头功能的近红外光谱(fNIRS)测量了皮质的激活,而参与者则经历了令人沮丧和不沮丧的驾驶模拟器场景。应用于fNIRS测量的多变量logistic回归使我们能够以78.1%的更高准确度来区分沮丧驾驶和非沮丧驾驶间隔(平均超过12名参与者)。下额额叶,推定的前运动皮层和枕颞皮层的激活增加表明驾驶间隔受挫。我们的研究结果表明,在复杂的现实驾驶情况下,面部和大脑皮层的沮丧感可以为识别时间分辨的驾驶员状态提供有益的信息。此处得出的标记可能会用作将来的自适应驾驶员辅助和自动化系统的输入,这些辅助系统和自动化系统可检测驾驶员的挫败感并做出自适应反应以减轻疲劳感。

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