Great work to the Meta AI team! Best part of it is they have open-sourced the code and plan to open-source data too! So you should be able to train your own brain-to-text model, assuming you have your own MEG! 😄 code: https://t.co/XF9z4JCzzq
AI Weekly's analysis
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- Meta's FAIR lab released Brain2Qwerty v2, a non-invasive MEG-to-text pipeline reaching an average 61% word accuracy across nine volunteers.
- The system was trained on roughly 22,000 sentences per participant recorded over 10 hours, with the top participant reaching 78% word accuracy.
- The original Brain2Qwerty study, run with 35 volunteers, is being published in Nature Neuroscience with a v1 MEG character error rate of 32%.
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