Assessing Drivers’ Mental Model Of Advanced Driver Assistance Systems Using Signal Detection Theory

Chunxi Huang, Song Yan, Dengbo He
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Abstract

Previous studies evaluated drivers’ knowledge of advanced driver assistance systems (ADAS) using different kinds of percent-correctness-based mental model scores (MMS), which makes cross-study comparisons difficult. To resolve this issue, our study explored the use of sensitivity (i.e., d-prime ( d’)) and response bias (i.e., criterion location ( c)) in signal detection theory (SDT) as a measure of drivers’ ADAS mental models. Based on the data collected from a survey among 287 ADAS users, regression models were fitted, and it was found that d’ and c accounted for a large variance when estimating drivers’ ADAS mental models as measured by MMSs (adjusted R 2 > 0.8). Further, predictors of MMSs were also predictors of d’ and c, but d’ and c include additional information that was not covered in MMSs. These findings support the usage of d’ and c as standard metrics for assessing drivers’ ADAS mental models in future research.
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利用信号检测理论评估高级驾驶辅助系统驾驶员的心理模型
先前的研究使用不同种类的基于百分比正确率的心智模型分数(MMS)来评估驾驶员对高级驾驶辅助系统(ADAS)的知识,这使得交叉研究比较变得困难。为了解决这个问题,我们的研究探索了在信号检测理论(SDT)中使用灵敏度(即d ')和反应偏差(即标准位置(c))作为驾驶员ADAS心理模型的度量。基于对287名ADAS用户的调查数据,对回归模型进行拟合,发现mms(调整后的r2 >0.8)。此外,mss的预测因子也是d '和c的预测因子,但d '和c包含了mss未涵盖的额外信息。这些发现支持在未来的研究中使用d '和c作为评估驾驶员ADAS心智模型的标准指标。
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