English

High-performance cVEP-BCI under minimal calibration

Human-Computer Interaction 2023-11-21 v1 Information Theory Signal Processing math.IT Neurons and Cognition

Abstract

The ultimate goal of brain-computer interfaces (BCIs) based on visual modulation paradigms is to achieve high-speed performance without the burden of extensive calibration. Code-modulated visual evoked potential-based BCIs (cVEP-BCIs) modulated by broadband white noise (WN) offer various advantages, including increased communication speed, expanded encoding target capabilities, and enhanced coding flexibility. However, the complexity of the spatial-temporal patterns under broadband stimuli necessitates extensive calibration for effective target identification in cVEP-BCIs. Consequently, the information transfer rate (ITR) of cVEP-BCI under limited calibration usually stays around 100 bits per minute (bpm), significantly lagging behind state-of-the-art steady-state visual evoked potential-based BCIs (SSVEP-BCIs), which achieve rates above 200 bpm. To enhance the performance of cVEP-BCIs with minimal calibration, we devised an efficient calibration stage involving a brief single-target flickering, lasting less than a minute, to extract generalizable spatial-temporal patterns. Leveraging the calibration data, we developed two complementary methods to construct cVEP temporal patterns: the linear modeling method based on the stimulus sequence and the transfer learning techniques using cross-subject data. As a result, we achieved the highest ITR of 250 bpm under a minute of calibration, which has been shown to be comparable to the state-of-the-art SSVEP paradigms. In summary, our work significantly improved the cVEP performance under few-shot learning, which is expected to expand the practicality and usability of cVEP-BCIs.

Keywords

Cite

@article{arxiv.2311.11596,
  title  = {High-performance cVEP-BCI under minimal calibration},
  author = {Yining Miao and Nanlin Shi and Changxing Huang and Yonghao Song and Xiaogang Chen and Yijun Wang and Xiaorong Gao},
  journal= {arXiv preprint arXiv:2311.11596},
  year   = {2023}
}

Comments

35 pages, 5 figures

R2 v1 2026-06-28T13:25:47.585Z