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research article

Decoding Neural Correlates of Cognitive States to Enhance Driving Experience

Chavarriaga, Ricardo  
•
Uscumlic, Marija
•
Zhang, Huaijian
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July 20, 2018
IEEE Transactions on Emerging Topics in Computational Intelligence

Modern cars can support their drivers by assessing and autonomously performing different driving maneuvers based on information gathered by in-car sensors. We propose that brain–machine interfaces (BMIs) can provide complementary information that can ease the interaction with intelligent cars in order to enhance the driving experience. In our approach, the human remains in control, while a BMI is used to monitor the driver's cognitive state and use that information to modulate the assistance provided by the intelligent car. In this paper, we gather our proof-of-concept studies demonstrating the feasibility of decoding electroencephalography correlates of upcoming actions and those reflecting whether the decisions of driving assistant systems are in-line with the drivers' intentions. Experimental results while driving both simulated and real cars consistently showed neural signatures of anticipation, movement preparation, and error processing. Remarkably, despite the increased noise inherent to real scenarios, these signals can be decoded on a single-trial basis, reflecting some of the cognitive processes that take place while driving. However, moderate decoding performance compared to the controlled experimental BMI paradigms indicate there exists room for improvement of the machine learning methods typically used in the state-of-the-art BMIs. We foresee that neural fusion correlates with information extracted from other physiological measures, e.g., eye movements or electromyography as well as contextual information gathered by in-car sensors will allow intelligent cars to provide timely and tailored assistance only if it is required; thus, keeping the user in the loop and allowing him to fully enjoy the driving experience.

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Type
research article
DOI
10.1109/TETCI.2018.2848289
Author(s)
Chavarriaga, Ricardo  
Uscumlic, Marija
Zhang, Huaijian
Khaliliardali, Zahra
Aydarkhanov, Ruslan
Saeedi, Sareh
Gheorghe, Lucian
Millan, Jose del R.
Date Issued

2018-07-20

Published in
IEEE Transactions on Emerging Topics in Computational Intelligence
Volume

2

Issue

4

Start page

288

End page

297

Subjects

Decoding

•

Electroencephalography

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Automobiles

•

Cognition

•

Symbiosis

•

Brain-computer interfaces

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
CNBI  
NCCR-ROBOTICS  
CNP  
Available on Infoscience
July 26, 2018
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/147486
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