Printer Modeling for Document Imaging

Margaret Norris, Elisa H. Barney Smith

Research output: Contribution to journalArticlepeer-review

13 Scopus citations
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Abstract

The microscopic details of printing often are unnoticed by humans, but can make differences that affect machine recognition of printed text. Models of the defects introduced into images by printing can be used to improve machine recognition. A probabilistic model used to generate images showing toner placement bears similarities to actual printed images. An equation derived for the average coverage of paper by toner particles having probabilistic placement is developed using geometric probability. Simulations show that averages of ‘printed images’ do have the same average coverage as the derived average coverage equations.

Original languageAmerican English
JournalProceedings of the 2004 International Conference on Imaging Science, Systems, and Technology (CISST'04)
StatePublished - 21 Jun 2004

Keywords

  • geometric probability
  • image defects
  • printer modeling

EGS Disciplines

  • Electrical and Computer Engineering

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