Reducing Warning Errors in Driver Support with Personalized Risk Maps
We consider the problem of human-focused driver support. State-of-the-art personalization concepts allow to estimate parameters for vehicle control systems or driver models. However, there are currently few approaches proposed that use personalized models and evaluate the effectiveness in the form o...
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Zusammenfassung: | We consider the problem of human-focused driver support. State-of-the-art
personalization concepts allow to estimate parameters for vehicle control
systems or driver models. However, there are currently few approaches proposed
that use personalized models and evaluate the effectiveness in the form of
general risk warning. In this paper, we therefore propose a warning system that
estimates a personalized risk factor for the given driver based on the driver's
behavior. The system afterwards is able to adapt the warning signal with
personalized Risk Maps. In experiments, we show examples for longitudinal
following and intersection scenarios in which the novel warning system can
effectively reduce false negative errors and false positive errors compared to
a baseline approach which does not use personalized driver considerations. This
underlines the potential of personalization for reducing warning errors in risk
warning and driver support. |
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DOI: | 10.48550/arxiv.2410.02148 |