Scribe: working with neural networks to reanimate the vibrant transformations of ancient music manuscripts
Twelfth International Conference on Music Since 1900, 17th-20th June 2022
Royal Birmingham Conservatoire
Dr Mark Dyer
Royal Holloway University of London
mark.dyer@rhul.ac.uk
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