自动与手动驾驶模式下注意力的动态变化:一项驾驶模拟研究

The Dynamics of Attention Across Automated and Manual Driving Modes: A Driving Simulation Study

Human Factors The Journal of the Human Factors and Ergonomics Society · 2026
被引 0
ABS 3

中文导读

通过驾驶模拟实验,研究了自动驾驶、手动驾驶及模式切换过程中驾驶员对不同区域的视觉注意力变化,发现注意力分配随驾驶模式动态调整,为自动驾驶汽车中控台设计和驾驶员培训提供了依据。

Abstract

ObjectiveThis study aims to explore the dynamics of driver attention to various zones, including road, central mirror, center stack, and instrument cluster, across different driving modes in AVs.BackgroundThe integration of automated vehicles (AVs) into transportation systems has introduced critical safety concerns, particularly regarding driver re-engagement during mode transitions. Past crashes underscore the risks when drivers overly rely on automation and highlight the need to understand dynamic attention allocation to support safety during automated driving.MethodA high-fidelity driving simulation was conducted to examine drivers' visual attention. Eye-tracking technology was employed to measure fixation duration, fixation count, and time to first fixation (TFF) across distinct driving modes (automated, manual, and transition). These indicators were analyzed to capture both sustained attention (fixation duration/count) and attentional reallocation/latency (time to first fixation), which are the critical aspects of visual attention to different areas of interest (AOIs).ResultsFindings show that drivers' attention varies significantly across driving modes. In manual mode, attention consistently focuses on the road, while in automated mode, prolonged fixation on center stack was observed. During the handover and takeover phases, attention shifts dynamically between environmental and technological elements.ConclusionThe study reveals that driver attention allocation is mode dependent. These findings inform the design of center stacks in AVs that align with drivers' attention patterns. By presenting relevant information according to the driving context, such systems can enhance driver-vehicle interaction, support effective transitions, and improve overall safety.ApplicationSystematic analysis of visual attention dynamics across driving modes is gaining prominence, as it informs center stack designs and driver readiness interventions. The generalized linear mixed model (GLMM) findings can be directly applied to the design of center stack or driver training programs to enhance attention and improve safety.

自动驾驶视觉注意力人机交互驾驶安全