On the Forces of Driver Distraction: Explainable Predictions for the Visual Demand of In-Vehicle Touchscreen Interactions
Patrick Ebel, Christoph Lingenfelder, Andreas Vogelsang

TL;DR
This paper introduces a machine learning approach that predicts and explains the visual demand of in-vehicle touchscreen interactions, aiding designers in creating safer HMIs by understanding distraction factors early in the design process.
Contribution
It presents a novel, accurate method using large-scale natural driving data and SHAP explanations to assess driver distraction caused by touchscreen UI elements.
Findings
Predicts long glances with 68% accuracy
Total glance duration prediction error of 2.4 seconds
Explanations align with recent distraction studies
Abstract
With modern infotainment systems, drivers are increasingly tempted to engage in secondary tasks while driving. Since distracted driving is already one of the main causes of fatal accidents, in-vehicle touchscreen Human-Machine Interfaces (HMIs) must be as little distracting as possible. To ensure that these systems are safe to use, they undergo elaborate and expensive empirical testing, requiring fully functional prototypes. Thus, early-stage methods informing designers about the implication their design may have on driver distraction are of great value. This paper presents a machine learning method that, based on anticipated usage scenarios, predicts the visual demand of in-vehicle touchscreen interactions and provides local and global explanations of the factors influencing drivers' visual attention allocation. The approach is based on large-scale natural driving data continuously…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Innovative Human-Technology Interaction · Data Visualization and Analytics
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
