Clusters of Driving Behavior from Observational Smartphone Data
Understanding driving behaviors is essential for improving safety and mobility of our transportation systems. Data is usually collected via simulator-based studies or naturalistic driving studies. Those techniques allow for understanding relations between demographics, road conditions and safety. On...
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Zusammenfassung: | Understanding driving behaviors is essential for improving safety and
mobility of our transportation systems. Data is usually collected via
simulator-based studies or naturalistic driving studies. Those techniques allow
for understanding relations between demographics, road conditions and safety.
On the other hand, they are very costly and time consuming. Thanks to the
ubiquity of smartphones, we have an opportunity to substantially complement
more traditional data collection techniques with data extracted from phone
sensors, such as GPS, accelerometer gyroscope and camera. We developed
statistical models that provided insight into driver behavior in the San
Francisco metro area based on tens of thousands of driver logs. We used novel
data sources to support our work. We used cell phone sensor data drawn from
five hundred drivers in San Francisco to understand the speed of traffic across
the city as well as the maneuvers of drivers in different areas. Specifically,
we clustered drivers based on their driving behavior. We looked at driver norms
by street and flagged driving behaviors that deviated from the norm. |
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DOI: | 10.48550/arxiv.1710.04502 |