Litcius/Paper detail

A shared robot control system combining augmented reality and motor imagery brain–computer interfaces with eye tracking

Arnau Dillen, Mohsen Omidi, Fakhreddine Ghaffari, Bram Vanderborght, Bart Roelands, Olivier Romain, Ann Nowé, Kevin De Pauw

2024Journal of Neural Engineering11 citationsDOIOpen Access PDF

Abstract

Abstract Objective . Brain–computer interface (BCI) control systems monitor neural activity to detect the user’s intentions, enabling device control through mental imagery. Despite their potential, decoding neural activity in real-world conditions poses significant challenges, making BCIs currently impractical compared to traditional interaction methods. This study introduces a novel motor imagery (MI) BCI control strategy for operating a physically assistive robotic arm, addressing the difficulties of MI decoding from electroencephalogram (EEG) signals, which are inherently non-stationary and vary across individuals. Approach . A proof-of-concept BCI control system was developed using commercially available hardware, integrating MI with eye tracking in an augmented reality (AR) user interface to facilitate a shared control approach. This system proposes actions based on the user’s gaze, enabling selection through imagined movements. A user study was conducted to evaluate the system’s usability, focusing on its effectiveness and efficiency. Main results . Participants performed tasks that simulated everyday activities with the robotic arm, demonstrating the shared control system’s feasibility and practicality in real-world scenarios. Despite low online decoding performance (mean accuracy: 0.52 9, F1: 0.29, Cohen’s Kappa: 0.12), participants achieved a mean success rate of 0.83 in the final phase of the user study when given 15 min to complete the evaluation tasks. The success rate dropped below 0.5 when a 5 min cutoff time was selected. Significance . These results indicate that integrating AR and eye tracking can significantly enhance the usability of BCI systems, despite the complexities of MI-EEG decoding. While efficiency is still low, the effectiveness of our approach was verified. This suggests that BCI systems have the potential to become a viable interaction modality for everyday applications in the future.

Topics & Concepts

Brain–computer interfaceComputer scienceMotor imageryUsabilityHuman–computer interactionInterface (matter)Eye trackingDecoding methodsAugmented realityElectroencephalographyArtificial intelligencePsychologyPsychiatryParallel computingTelecommunicationsMaximum bubble pressure methodBubbleEEG and Brain-Computer InterfacesGaze Tracking and Assistive TechnologyCognitive Functions and Memory