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Eigenvectors of optimal color spectra. | LitMetric

AI Article Synopsis

  • PCA and weighted PCA were used on color spectra related to the object's surface and MacAdam limits, analyzing a circulant correlation matrix.
  • The analysis revealed that the largest eigenvalue is distinct with a constant eigenvector, while the other eigenvalues are double, expressed with trigonometric functions, which can reconstruct smooth reflectance spectra.
  • By applying a specific weight function, the main color information is condensed into three components that relate to one achromatic and two chromatic response functions, similar to Munsell opponent-hue directions.

Article Abstract

Principal component analysis (PCA) and weighted PCA were applied to spectra of optimal colors belonging to the outer surface of the object-color solid or to so-called MacAdam limits. The correlation matrix formed from this data is a circulant matrix whose biggest eigenvalue is simple and the corresponding eigenvector is constant. All other eigenvalues are double, and the eigenvectors can be expressed with trigonometric functions. Found trigonometric functions can be used as a general basis to reconstruct all possible smooth reflectance spectra. When the spectral data are weighted with an appropriate weight function, the essential part of the color information is compressed to the first three components and the shapes of the first three eigenvectors correspond to one achromatic response function and to two chromatic response functions, the latter corresponding approximately to Munsell opponent-hue directions 9YR-9B and 2BG-2R.

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Source
http://dx.doi.org/10.1364/JOSAA.30.001806DOI Listing

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