School of Vehicle and Mobility, Tsinghua University, Beijing, 100084, China.
School of Medicine, Tsinghua University, Beijing, 100084, China.
Sci Data. 2024 May 28;11(1):546. doi: 10.1038/s41597-024-03353-6.
For highly autonomous vehicles, human does not need to operate continuously vehicles. The brain-computer interface system in autonomous vehicles will highly depend on the brain states of passengers rather than those of human drivers. It is a meaningful and vital choice to translate the mental activities of human beings, essentially playing the role of advanced sensors, into safe driving. Quantifying the driving risk cognition of passengers is a basic step toward this end. This study reports the creation of an fNIRS dataset focusing on the prefrontal cortex activity in fourteen types of highly automated driving scenarios. This dataset considers age, sex and driving experience factors and contains the data collected from an 8-channel fNIRS device and the data of driving scenarios. The dataset provides data support for distinguishing the driving risk in highly automated driving scenarios via brain-computer interface systems, and it also provides the possibility of preventing potential hazards in some scenarios, in which risk remains at a high value for an extended period, before hazard occurs.
对于高度自动驾驶的车辆,人不需要持续地操作车辆。自动驾驶车辆中的脑机接口系统将高度依赖于乘客的大脑状态,而不是人类驾驶员的大脑状态。将人类的心理活动,本质上是作为高级传感器,转化为安全驾驶,是一个有意义和重要的选择。量化乘客的驾驶风险认知是实现这一目标的基本步骤。本研究报告了创建一个专注于前额叶皮层活动的 fNIRS 数据集,该数据集涵盖了 14 种高度自动化的驾驶场景。该数据集考虑了年龄、性别和驾驶经验等因素,包含了从 8 通道 fNIRS 设备收集的数据和驾驶场景的数据。该数据集为通过脑机接口系统区分高度自动化驾驶场景中的驾驶风险提供了数据支持,还为某些场景中潜在危险的预防提供了可能性,这些场景中的风险值在一段时间内保持在较高水平,直到危险发生。