Aix Marseille Univ, CNRS, ISM, Marseille, France; Groupe PSA, Centre Technique de Vélizy, Vélizy-Villacoublay, Cedex, France.
Aix Marseille Univ, CNRS, ISM, Marseille, France.
Accid Anal Prev. 2018 Dec;121:118-128. doi: 10.1016/j.aap.2018.08.017. Epub 2018 Sep 20.
Monitoring car drivers for drowsiness is crucial but challenging. The high inter-individual variability observed in measurements raises questions about the accuracy of the drowsiness detection process. In this study, we sought to enhance the performance of machine learning models (Artificial Neural Networks: ANNs) by training a model with a group of drivers and then adapting it to a new individual. Twenty-one participants drove a car simulator for 110 min in a monotonous environment. We measured physiological and behavioral indicators and recorded driving behavior. These measurements, in addition to driving time and personal information, served as the ANN inputs. Two ANN-based models were used, one to detect the level of drowsiness every minute, and the other to predict, every minute, how long it would take the driver to reach a specific drowsiness level (moderately drowsy). The ANNs were trained with 20 participants and subsequently adapted using the earliest part of the data recorded from a 21st participant. Then the adapted ANNs were tested with the remaining data from this 21st participant. The same procedure was run for all 21 participants. Varying amounts of data were used to adapt the ANNs, from 1 to 30 min, Model performance was enhanced for each participant. The overall drowsiness monitoring performance of the models was enhanced by roughly 40% for prediction and 80% for detection.
监测驾驶员的困倦状态至关重要,但也极具挑战性。在测量中观察到的个体间高度可变性引发了对困倦检测过程准确性的质疑。在这项研究中,我们试图通过训练一个模型来提高机器学习模型(人工神经网络:ANNs)的性能,该模型由一组驾驶员进行训练,然后将其应用于新的个体。21 名参与者在单调环境中驾驶汽车模拟器 110 分钟。我们测量了生理和行为指标,并记录了驾驶行为。这些测量值,以及驾驶时间和个人信息,作为 ANN 的输入。我们使用了两种基于 ANN 的模型,一种用于每分钟检测困倦程度,另一种用于预测驾驶员达到特定困倦程度(中度困倦)所需的时间。ANN 是用 20 名参与者进行训练的,然后使用第 21 名参与者最早记录的数据的一部分对其进行适应。然后,使用第 21 名参与者的其余数据对适应后的 ANN 进行测试。对于所有 21 名参与者,都执行了相同的程序。使用从 1 到 30 分钟不等的不同数量的数据来适应 ANN。每个参与者的模型性能都得到了提高。模型的整体困倦监测性能在预测方面提高了约 40%,在检测方面提高了约 80%。