Meta improves Brain2QWERTY, a system that can decode text from brain activity to enable typing using non-invasive technologies, MEG and EEG
Summary
Meta has improved Brain2QWERTY, a non-invasive system using MEG and EEG to decode brain activity into text, enabling typing.
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