TY - CONF TI - Monitoring driver cognitive load using functional near infrared spectroscopy in partially autonomous cars AU - Sibi, Srinath AU - Ayaz, Hasan AU - Kuhns, David P. AU - Sirkin, David M. AU - Ju, Wendy T2 - 2016 IEEE Intelligent Vehicles Symposium (IV) AB - In partially automated cars, it is vital to understand the driver state, especially the driver's cognitive load. This might indicate whether the driver is alert or distracted, and if the car can safely transfer control of driving. In order to better understand the relationship between cognitive load and the driver performance in a partially autonomous vehicle, functional near infrared spectroscopy (fNIRS) measures were employed to study the activation of the prefrontal cortex of drivers in a simulated environment. We studied a total of 14 participants while they drove a partially autonomous car and performed common secondary tasks. We observed that when participants were asked to monitor the driving of an autonomous car they had low cognitive load compared to when the same participants were asked to perform a secondary reading or video watching task on a brought in device. This observation was in line with the increased drowsy behavior observed during intervals of autonomous system monitoring in previous studies. Results demonstrate that fNIRS signals from prefrontal cortex indicate additional cognitive load during manual driving compared to autonomous. Such brain function metrics could be used with minimally intrusive and low cost sensors to enable real-time assessment of driver state in future autonomous vehicles to improve safety and efficacy of transfer of control. C1 - Gotenburg, Sweden C3 - 2016 IEEE Intelligent Vehicles Symposium (IV) DA - 2016/06// PY - 2016 DO - 10.1109/IVS.2016.7535420 DP - DOI.org (Crossref) SP - 419 EP - 425 LA - en PB - IEEE SN - 978-1-5090-1821-5 UR - http://ieeexplore.ieee.org/document/7535420/ Y2 - 2021/06/02/14:52:39 ER -