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arxiv: 1812.06857 · v1 · pith:SS7NPZWInew · submitted 2018-12-17 · 💻 cs.LG · cs.HC· eess.SP

Transfer Learning in Brain-Computer Interfaces with Adversarial Variational Autoencoders

classification 💻 cs.LG cs.HCeess.SP
keywords adversarialapproachlearningbrain-computercvaedatainterfacessubject-invariant
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We introduce adversarial neural networks for representation learning as a novel approach to transfer learning in brain-computer interfaces (BCIs). The proposed approach aims to learn subject-invariant representations by simultaneously training a conditional variational autoencoder (cVAE) and an adversarial network. We use shallow convolutional architectures to realize the cVAE, and the learned encoder is transferred to extract subject-invariant features from unseen BCI users' data for decoding. We demonstrate a proof-of-concept of our approach based on analyses of electroencephalographic (EEG) data recorded during a motor imagery BCI experiment.

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