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Vision / Standard illuminant / Metamerism / CIE 1931 color space / Lab color space / Illuminant D65 / Principal component analysis / Pigment / Chromatic adaptation / Color / Optics / Perception
Date: 2008-02-08 15:15:56
Vision
Standard illuminant
Metamerism
CIE 1931 color space
Lab color space
Illuminant D65
Principal component analysis
Pigment
Chromatic adaptation
Color
Optics
Perception

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