TY - JOUR
T1 - Multi-layer ear-scalp distillation framework for ear-EEG classification enhancement
AU - Sun, Ying
AU - Zhang, Feiyang
AU - Li, Ziyu
AU - Liu, Xiaolin
AU - Zheng, Dezhi
AU - Zhang, Shuailei
AU - Fan, Shangchun
AU - Wu, Xia
N1 - Publisher Copyright:
© 2024 The Author(s). Published by IOP Publishing Ltd.
PY - 2024/12/1
Y1 - 2024/12/1
N2 - Background. Ear-electroencephalography (ear-EEG) holds significant promise as a practical tool in brain-computer interfaces (BCIs) due to its enhanced unobtrusiveness, comfort, and mobility compared to traditional steady-state visual evoked potential (SSVEP)-based BCI systems. However, achieving accurate SSVEP classification with ear-EEG remains a major challenge due to the significant attenuation and distortion of the signal amplitude. Objective . Our aim is to enhance the classification performance of SSVEP using ear-EEG and to increase its practical application value. Approach . To address this challenge, we focus on enhancing ear-EEG feature representations by training the model to learn features similar to those of scalp-EEG. We introduce a novel framework, termed multi-layer ear-scalp distillation (MESD), designed to optimize SSVEP target classification in ear-EEG data. This framework combines signals from the scalp to obtain multi-layer distilled knowledge through the cooperation of mid-layer feature distillation and output layer response distillation. Main results . We improve the classification of the initial 1 s data and achieved a maximum classification accuracy of 81.1%. We evaluate the proposed MESD framework through single-session, cross-session, and cross-subject transfer decoding, comparing it with baseline methods. The results demonstrate that the proposed framework achieves the best classification results in all experiments. Significance . Our study enhances the classification accuracy of SSVEP based on ear-EEG within a short time window. These results offer insights for the application of ear-EEG brain-computer interfaces in tasks such as auxiliary control and rehabilitation training in future endeavors.
AB - Background. Ear-electroencephalography (ear-EEG) holds significant promise as a practical tool in brain-computer interfaces (BCIs) due to its enhanced unobtrusiveness, comfort, and mobility compared to traditional steady-state visual evoked potential (SSVEP)-based BCI systems. However, achieving accurate SSVEP classification with ear-EEG remains a major challenge due to the significant attenuation and distortion of the signal amplitude. Objective . Our aim is to enhance the classification performance of SSVEP using ear-EEG and to increase its practical application value. Approach . To address this challenge, we focus on enhancing ear-EEG feature representations by training the model to learn features similar to those of scalp-EEG. We introduce a novel framework, termed multi-layer ear-scalp distillation (MESD), designed to optimize SSVEP target classification in ear-EEG data. This framework combines signals from the scalp to obtain multi-layer distilled knowledge through the cooperation of mid-layer feature distillation and output layer response distillation. Main results . We improve the classification of the initial 1 s data and achieved a maximum classification accuracy of 81.1%. We evaluate the proposed MESD framework through single-session, cross-session, and cross-subject transfer decoding, comparing it with baseline methods. The results demonstrate that the proposed framework achieves the best classification results in all experiments. Significance . Our study enhances the classification accuracy of SSVEP based on ear-EEG within a short time window. These results offer insights for the application of ear-EEG brain-computer interfaces in tasks such as auxiliary control and rehabilitation training in future endeavors.
KW - brain computer interface
KW - ear-electroencephalography
KW - knowledge distillation
KW - steady-state visual evoked potential
UR - http://www.scopus.com/inward/record.url?scp=85211362861&partnerID=8YFLogxK
U2 - 10.1088/1741-2552/ad9778
DO - 10.1088/1741-2552/ad9778
M3 - Article
C2 - 39591752
AN - SCOPUS:85211362861
SN - 1741-2560
VL - 21
JO - Journal of Neural Engineering
JF - Journal of Neural Engineering
IS - 6
M1 - 066027
ER -