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Science / Writing / Penmanship / Graphology / Automatic identification and data capture / Handwriting recognition / Machine translation / Handwriting / NIST / Artificial intelligence applications / Artificial intelligence / Computational linguistics
Date: 2013-08-19 18:11:34
Science
Writing
Penmanship
Graphology
Automatic identification and data capture
Handwriting recognition
Machine translation
Handwriting
NIST
Artificial intelligence applications
Artificial intelligence
Computational linguistics

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