The World Bank Global Road Safety Facility (GRSF) has published a Report titled Detecting Urban Clues for Road Safety: Leveraging Big Data and Machine Learning Report. The Report presents opportunities to use new technologies to improve current methods for data collection and analysis for various road safety assessments. This guidance note provides a practical guide for using new data sources and analytical methods for road safety analysis in different types of projects that may impact road infrastructure or risk-related factors.
World Bank/GRSF – Detecting Urban Clues for Road Safety Report, May 2022
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