INVESTIGADORES
CAIAFA Cesar Federico
artículos
Título:
A Brain-Controlled Vehicle System Based on Steady State Visual Evoked Potentials
Autor/es:
ZHANG, ZHAO; HAN, SHUNING; YI, HUAIHAI; DUAN, FENG; KANG, FEI; SUN, ZHE; SOLÉ-CASALS, JORDI; CAIAFA, CESAR F.
Revista:
Cognitive Computation
Editorial:
Nature Springer
Referencias:
Año: 2022
ISSN:
1866-9956
Resumen:
In this paper, we propose a human-vehicle cooperative driving system. The objectives of this research are twofold: (1) providing a feasible brain-controlled vehicle (BCV) mode; (2) providing a human vehicle cooperative control mode. For the first aim, through a brain-computer interface (BCI), we can analyse the EEG signal and get the driving intentions of the driver. For the second aim, the human vehicle cooperative control is manifested in the BCV combined with the obstacle detection assistance. Considering the potential dangers of driving a real motor vehicle in the outdoor, an obstacle detec- tion module is essential in the human-vehicle cooperative driving system. Obstacle detection and emergency braking can ensure the safety of the driver and the vehicle during driving. EEG system based on steady-state visual evoked potential (SSVEP) is used in the BCI. Simulation and real vehicle driving experiment platform are designed to verify the feasibility of the proposed human-vehicle cooperative driving system. Five subjects participated in the simulation experiment and real the vehicle driving experiment. The outdoor experimental results show that the average accuracy of intention recognition is 90.68 ± 2.96% on the real vehicle platform. In this paper, we verified the feasibility of the SSVEP-based BCV mode and realised the human-vehicle cooperative driving system