TITLE

Adam Matthew's Text Recognition

AUTHOR(S)
Enis, Matt
PUB. DATE
November 2017
SOURCE
Library Journal;11/15/2017, Vol. 142 Issue 19, p14
SOURCE TYPE
Trade Publication
DOC. TYPE
Article
ABSTRACT
The article reports on the introduction of the artificial intelligence (AI) technology handwritten text recognition (HTR) in September 2017 by academic publisher Adam Matthew Digital. It states that the technology was used for mail sorting at post offices and signature verification. Remarks from Adam Matthew's head of technical Glyn Porritt about the issue, are presented.
ACCESSION #
126290871

 

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