4.4 Review

Distracted Driving Crashes: A Review on Data Collection, Analysis, and Crash Prevention Methods

Journal

TRANSPORTATION RESEARCH RECORD
Volume 2676, Issue 8, Pages 423-434

Publisher

SAGE PUBLICATIONS INC
DOI: 10.1177/03611981221083917

Keywords

safety; behavioral safety analysis and program development

Funding

  1. New Jersey Division of Highway Traffic Safety [DD-21-45-03-01]

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Distracted driving is a major cause of traffic fatalities, and recent technological advancements have increased its sources and frequency. This study provides a comprehensive literature review and summarizes best practices for collecting and analyzing data on distracted driving, as well as countermeasures to mitigate it. The severity of crashes involving distracted driving depends on driver behavior and roadway design, and dashcam cameras integrated into the dashboard can be used to collect driver behavior data. Deep learning techniques are commonly used for detecting distracted driving, and the integration of the three Es approach is necessary for effective countermeasures.
Distracted driving is one of the top three reasons for traffic fatalities. Every year, thousands of people are injured or killed in motor vehicle crashes resulting from distracted driving and recent technological advancements have increased the sources and frequency of distractions. This study provides a comprehensive literature review and a summary of findings for identifying best practices to collect and analyze data on distracted driving and countermeasures to mitigate distracted driving. It identifies literature published since 2006 that focuses exclusively on distracted driving. The results found that the severity of crashes involving distracted driving depends primarily on driver behavior and the geometric design of roadway and temporal variables. It was also found that several techniques exist to collect driver behavior data using dashcam cameras integrated into the dashboard of vehicles. For the detection of distracted driving, deep learning techniques are most often used by researchers. It is also found that the integration of the three Es approach in countermeasures is needed to mitigate distracted driving. These findings will help decision-makers comprehend the significant contributing factors associated with crashes involving distracted driving and implement the necessary data collection, data analysis, and practical treatments to reduce the crash severity. Based on the literature review findings, future research recommendations to address distracted driving are proposed.

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