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Optica Publishing Group
  • Chinese Optics Letters
  • Vol. 7,
  • Issue 8,
  • pp. 748-752
  • (2009)

Color reproduction from desktop display to projector based on visual matching

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Abstract

We present a novel method of color reproduction from desktop displays to projectors via visual assessment. The model is based on visual matching nine color patches between a display and a projector. The effects of the method to improve color reproduction are tested for 30 samples by visual and color difference evaluations. The expeirmental results of visual evaluation show that the color reproduction is improved by 87.5%. The maximum, minimum, and average color differences between the displayed colors and the projected ones before and after correction are 28.94, 4.35, 16.78, 16.51, 0.64, and 3.51 \DeltaE^{*}_{ab} units respectively, which are consistent with the results of visual evaluation.

© 2009 Chinese Optics Letters

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