基于生理信号和多视角多任务机器学习的真实驾驶诱导情感状态检测

D. Martinez, Neska El Haouij, Rosalind W. Picard
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引用次数: 15

摘要

情感状态对驾驶性能和安全起着至关重要的作用。它们会降低驾驶员的处境意识,并对认知过程产生负面影响,严重降低道路安全。因此,检测和评估驾驶员的情感状态对于改善驾驶体验、提高安全性、舒适性和幸福感至关重要。情感计算的最新进展使这种状态的检测成为可能。这可能会导致移情的汽车用户界面,说明驾驶员的情绪状态和影响驾驶员,以提高安全性。在这项工作中,我们提出了一种多视图多任务机器学习方法,用于使用生理信号检测驾驶员的情感状态。所提出的方法能够解释生理反应中的内部驱动变异性,同时使学习模型具有可解释性,这是在现实世界中部署的系统中特别重要的一个因素。我们在包含真实驾驶经验的三个不同数据集上评估模型。我们的结果表明,考虑特定于驱动器的差异可以显著提高模型性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of Real-World Driving-Induced Affective State Using Physiological Signals and Multi-View Multi-Task Machine Learning
Affective states have a critical role in driving performance and safety. They can degrade driver situation awareness and negatively impact cognitive processes, severely diminishing road safety. Therefore, detecting and assessing drivers' affective states is crucial in order to help improve the driving experience, and increase safety, comfort and well-being. Recent advances in affective computing have enabled the detection of such states. This may lead to empathic automotive user interfaces that account for the driver's emotional state and influence the driver in order to improve safety. In this work, we propose a multiview multi-task machine learning method for the detection of driver's affective states using physiological signals. The proposed approach is able to account for inter-drive variability in physiological responses while enabling interpretability of the learned models, a factor that is especially important in systems deployed in the real world. We evaluate the models on three different datasets containing real-world driving experiences. Our results indicate that accounting for drive-specific differences significantly improves model performance.
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