about
Using self-reported data to assess the validity of driving simulation data.A laboratory driving simulation for assessment of driving behavior in adults with ADHD: a controlled study.Improving safety and operational efficiency in residential care settings with WiFi-based localization.Secondary analysis of time of day on simulated driving performance.A field study on the effects of digital billboards on glance behavior during highway driving.Reductions in self-reported stress and anticipatory heart rate with the use of a semi-automated parallel parking system.Brief report: examining driving behavior in young adults with high functioning autism spectrum disorders: a pilot study using a driving simulation paradigm.Glance analysis of driver eye movements to evaluate distraction.A field study on the impact of variations in shortterm memory demands on drivers' visual attention and driving performance across three age groups.Detecting eye movements in dynamic environments.The effects of lisdexamfetamine dimesylate on the driving performance of young adults with ADHD: A randomized, double-blind, placebo-controlled study using a validated driving simulator paradigmThe validity of driving simulation for assessing differences between in-vehicle informational interfaces: A comparison with field testingThe impact of cognitive workload on physiological arousal in young adult drivers: a field study and simulation validationThe effect of feedback on attitudes toward cellular phone use while driving: a comparison between novice and experienced driversThe effects of visual crowding, text size, and positional uncertainty on text legibility at a glanceThe relative impact of smartwatch and smartphone use while driving on workload, attention, and driving performance
P50
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P50
description
onderzoeker
@nl
researcher ORCID ID = 0000-0003-4850-8738
@en
name
Bryan Reimer
@ast
Bryan Reimer
@en
Bryan Reimer
@es
Bryan Reimer
@nl
type
label
Bryan Reimer
@ast
Bryan Reimer
@en
Bryan Reimer
@es
Bryan Reimer
@nl
prefLabel
Bryan Reimer
@ast
Bryan Reimer
@en
Bryan Reimer
@es
Bryan Reimer
@nl
P106
P1153
7003475727
P2456
P31
P496
0000-0003-4850-8738