NCCVHCApr 21, 2023

Generate your neural signals from mine: individual-to-individual EEG converters

arXiv:2304.10736v111 citationsh-index: 24
Originality Highly original
AI Analysis

This addresses the issue of poor generalization across subjects in cognitive and computational neuroscience models, offering a flexible framework for neural engineering and cognitive neuroscience.

The paper tackles the problem of individual differences in EEG signals by proposing EEG2EEG, an individual-to-individual converter that generates one subject's neural signals from another's, achieving high conversion performance and clearer visual representations than real data.

Most models in cognitive and computational neuroscience trained on one subject do not generalize to other subjects due to individual differences. An ideal individual-to-individual neural converter is expected to generate real neural signals of one subject from those of another one, which can overcome the problem of individual differences for cognitive and computational models. In this study, we propose a novel individual-to-individual EEG converter, called EEG2EEG, inspired by generative models in computer vision. We applied THINGS EEG2 dataset to train and test 72 independent EEG2EEG models corresponding to 72 pairs across 9 subjects. Our results demonstrate that EEG2EEG is able to effectively learn the mapping of neural representations in EEG signals from one subject to another and achieve high conversion performance. Additionally, the generated EEG signals contain clearer representations of visual information than that can be obtained from real data. This method establishes a novel and state-of-the-art framework for neural conversion of EEG signals, which can realize a flexible and high-performance mapping from individual to individual and provide insight for both neural engineering and cognitive neuroscience.

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