Institute of Psychology, Section Experimental Psychology, Johannes Gutenberg-Universität Mainz, Wallstrasse 3, Mainz 55122, Germany.
Institute of Psychology, Section Experimental Psychology, Johannes Gutenberg-Universität Mainz, Wallstrasse 3, Mainz 55122, Germany.
Accid Anal Prev. 2022 Sep;175:106778. doi: 10.1016/j.aap.2022.106778. Epub 2022 Jul 22.
To avoid collision, pedestrians intending to cross a road need to estimate the time-to-collision (TTC) of an approaching vehicle. Here, we present a novel interactive audiovisual virtual-reality system for investigating how the acoustic characteristics (loudness and engine type) of vehicles influence the TTC estimation. Using acoustic recordings of real vehicles as source signals, the dynamic spatial sound fields corresponding to a vehicle approaching in an urban setting are generated based on physical modeling of the sound propagation between vehicle and pedestrian and are presented via sound field synthesis. We studied TTC estimation for vehicles with internal combustion engine and for loudness-matched electric vehicles. The vehicle sound levels were varied by 10 dB, independently of the speed, presented TTC, and vehicle type. In an auditory-only condition, the cars were not visible, and lower loudness of the cars resulted in considerably longer TTC estimates. Importantly, the loudness of the cars also had a significant effect in the same direction on the TTC estimates in an audiovisual condition, where the cars were additionally visually presented via interactive virtual-reality simulations. Thus, pedestrians use auditory information when estimating TTC, even when full visual information is available. At equal loudness, the TTC judgments for electric and conventional vehicles were virtually identical, indicating that loudness has a stronger effect than spectral differences. Because TTC overestimations can result in risky road crossing decisions, the results imply that vehicle loudness should be considered as an important factor in pedestrian safety.
为了避免碰撞,行人需要估计即将到来的车辆的碰撞时间 (TTC)。在这里,我们提出了一种新颖的交互式视听虚拟现实系统,用于研究车辆的声学特征(响度和发动机类型)如何影响 TTC 估计。使用真实车辆的录音作为源信号,基于车辆和行人之间声音传播的物理建模,生成与车辆在城市环境中接近相对应的动态空间声场,并通过声场合成进行呈现。我们研究了具有内燃机和响度匹配的电动汽车的 TTC 估计。通过 10dB 的变化独立于速度、呈现的 TTC 和车辆类型来改变车辆声音水平。在仅听觉的条件下,汽车不可见,汽车的响度较低导致 TTC 估计明显延长。重要的是,即使提供了完整的视觉信息,汽车的响度在视听条件下对 TTC 估计也有相同的显著影响,其中汽车还通过交互式虚拟现实模拟以视觉方式呈现。因此,即使有完整的视觉信息,行人在估计 TTC 时也会使用听觉信息。在响度相等的情况下,电动和传统车辆的 TTC 判断几乎相同,这表明响度比频谱差异的影响更大。由于 TTC 估计过高可能导致危险的道路穿越决策,因此这些结果表明,车辆响度应被视为行人安全的一个重要因素。