模态(人机交互)
任务(项目管理)
计算机科学
听觉显示
控制(管理)
听觉反馈
听觉系统
语音识别
听觉感知
接口(物质)
听觉刺激
听力学
心理学
人机交互
认知心理学
感知
人工智能
工程类
医学
系统工程
气泡
神经科学
最大气泡压力法
并行计算
作者
Chunlei Chai,Lei Yu,Haoran Wei,Changxu Wu,Wei Zhang,Preben Hansen,Hao Fan,Jinlei Shi
标识
DOI:10.1016/j.apergo.2024.104252
摘要
With the era of automated driving approaching, designing an effective auditory takeover request (TOR) is critical to ensure automated driving safety. The present study investigated the effects of speech-based (speech and spearcon) and non-speech-based (earcon and auditory icon) TORs on takeover performance and subjective preferences. The potential impact of the non-driving-related task (NDRT) modality on auditory TORs was considered. Thirty-two participants were recruited in the present study and assigned to two groups, with one group performing the visual N-back task and another performing the auditory N-back task during automated driving. They were required to complete four simulated driving blocks corresponding to four auditory TOR types. The earcon TOR was found to be the most suitable for alerting drivers to return to the control loop because of its advantageous takeover time, lane change time, and minimum time to collision. Although participants preferred the speech TOR, it led to relatively poor takeover performance. In addition, the auditory NDRT was found to have a detrimental impact on auditory TORs. When drivers were engaged in the auditory NDRT, the takeover time and lane change time advantages of earcon TORs no longer existed. These findings highlight the importance of considering the influence of auditory NDRTs when designing an auditory takeover interface. The present study also has some practical implications for researchers and designers when designing an auditory takeover system in automated vehicles.
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