TY - GEN
T1 - Deep Learning for Channel-Agnostic Brain Decoding across Multiple Subjects
AU - Date, Hiroto
AU - Kawasaki, Keisuke
AU - Hasegawa, Isao
AU - Okatani, Takayuki
N1 - Funding Information:
This work was partly supported by JSPS KAKENHI Grant Number JP15H05919. H. D. was supported by the doctoral course scholarship of Division for Interdisciplinary Advanced Research and Education (DIARE), Tohoku University.
Publisher Copyright:
© 2020 IEEE.
PY - 2020/2
Y1 - 2020/2
N2 - Accurate decoding of perceptual information from brain signals is crucial in real-world BCI applications. While existing decoding methods work well in static, single-subject cases, more versatile, multi-subject decoding methods should be developed for achieving scalable and transferable BCI systems. In practice, it is not straightforward to record brain signals using the same recording equipment from a large number of subjects. If a pretrained decoder is not robust to subject or channel shifts, it cannot be applied to data from novel subjects and even from trained subjects when the recording equipment changes. In this work, we study brain decoding across multiple subjects with a different number of recording channels and channel location shifts. We consider channel-agnostic brain decoding as a multi-instance learning problem, where each input is seen as a set of instances. We propose a novel decoder architecture based on three building blocks: A channel-wise transform, an across-channel transform, and multi-channel pooling. We conduct a thorough experiment on our multi-subject electrocorticography (ECoG) classification dataset to verify the effectiveness of our proposed methods against other baseline architectures. Our results show that, even without any explicit spatial information about channels, our proposed architecture with channel permutation invariance and channel interactions work well in channel-agnostic multi-subject brain decoding.
AB - Accurate decoding of perceptual information from brain signals is crucial in real-world BCI applications. While existing decoding methods work well in static, single-subject cases, more versatile, multi-subject decoding methods should be developed for achieving scalable and transferable BCI systems. In practice, it is not straightforward to record brain signals using the same recording equipment from a large number of subjects. If a pretrained decoder is not robust to subject or channel shifts, it cannot be applied to data from novel subjects and even from trained subjects when the recording equipment changes. In this work, we study brain decoding across multiple subjects with a different number of recording channels and channel location shifts. We consider channel-agnostic brain decoding as a multi-instance learning problem, where each input is seen as a set of instances. We propose a novel decoder architecture based on three building blocks: A channel-wise transform, an across-channel transform, and multi-channel pooling. We conduct a thorough experiment on our multi-subject electrocorticography (ECoG) classification dataset to verify the effectiveness of our proposed methods against other baseline architectures. Our results show that, even without any explicit spatial information about channels, our proposed architecture with channel permutation invariance and channel interactions work well in channel-agnostic multi-subject brain decoding.
KW - Deep learning
KW - brain modeling
KW - brain-computer interfaces
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U2 - 10.1109/BCI48061.2020.9061615
DO - 10.1109/BCI48061.2020.9061615
M3 - Conference contribution
AN - SCOPUS:85084032278
T3 - 8th International Winter Conference on Brain-Computer Interface, BCI 2020
BT - 8th International Winter Conference on Brain-Computer Interface, BCI 2020
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 8th International Winter Conference on Brain-Computer Interface, BCI 2020
Y2 - 26 February 2020 through 28 February 2020
ER -