10a.m.- 10:30a.m. (PT) | Link to register.
Automotive companies are constantly striving to enhance their vehicles to minimize and ultimately eliminate driver errors and enhance safety. Various advanced driver assistance systems (ADAS) and automated features are designed to warn, and in some cases, take over certain driving maneuvers. These systems are part of vehicles with driver assist technology, which are vital for the successful deployment of connected and automated vehicles (CAVs) in the near future. What are these features? How do they work? How does a driver’s behavior vary when driving a vehicle with ADAS or automated features in rural, urban, and freeway driving scenarios? This webinar explores these questions based on research from evaluating drivers’ behavioral response to scenarios when driving vehicles with and without features like lane departure warning (LDW), blind spot warning (BSW), over speed warning (OSW), lane keep assist (LKA), and adaptive cruise control (acc).
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