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Digital Color Imaging HANDBOOK Edited by Gaurav Sharma School of Electrical Engineering and Computer Science Kyungpook National Univ. 3.8 Models for halftoned samples Printing devices – Certain fixed density or leaving the substrate unprinted, only bilevel – Obtaining intermediate tone level by means of the halftoning techinque – Giving an illusion of a full range of intermediate color levels to the eye when looking from a sufficient distance Focusing on predicting the reflectance of halftoned samples 2 / 20 3.8.1 The Murray-Davis equation The total reflectance spectrum R (λ ) of a halftoned sample (3.102) Where Rs (λ ) is reflectance spectrum of a solid sample Rg (λ ) is reflectance spectrum of the bare substrate a is fraction of area covered with ink (0 ≤ a ≤ 1) Change the relation by Reflection density spectrum D(λ ) = − log10 R(λ ) (3.103) (3.104) 3 / 20 Reflectance of halftoned samples Fig. 3.27. Reflectance of halftoned samples having a fraction a of area covered with black ink (continuous line), the murry-davis model (dotted line), the Clapper-Yule model (dashed line). 4 / 20 3.8.2 The classical Neugebauer theory Predicting the spectra of halftoned color prints produced (1937) – Superposition of cyan, magenta, and yellow dot-screens – Observed, under the microscope, that such a halftone print was in fact a mosaic of eight colors • Neugebauer primary : cyan, magenta, yellow, red, green, blue, and black – Assume that the dots in the different screens are almost independent of each other – Neugebauer’s model (3.105) 5 / 20 Fraction of area occupied by the eight Neugebauer primaries Fig. 3.28. Fraction of area occupied by the eight primaries of the neugebauer model. 6 / 20 3.8.3 Extended neugebauer theory Cellular Neugebauer method (Heuberger, 1992) – Classical Neugebauer equation leads to color prediction errors of about ∆E = 10 – Subdividing CMY color space into rectangular cells ~ – Using new reflectance spectra R for each cells j (λ ) (1 ≤ j ≤ 8) – Error drops to ∆E = 3 , but requiring measuring 53 = 125 samples Generalization of Neugebauer theory with the number of inks k (3.106) 7 / 20 3.8.4 The Yule-Nielsen equation Consider the light scattering in the substrate – Photon that penetrates the substrate in an area without ink may emerge in an inked area, and vice versa – Fraction of area a obtained from eq. 3.104 is greater than the real area covered by ink, called optical dot gain or Yule-Nielsen effect – Improve the prediction of the reflection density (1951) (3.107) (3.108) 8 / 20 3.8.5 The Clapper-Yule equation In this model – A fraction of light emerges at each reflection cycle – The total reflectance is the sum of all those fractions rs : surface reflection ri : internal reflection ρg : body reflectance of the substrate T ( λ) : transmittance spectrum of the ink under diffuse light Fig. 3.28. In the Clapper-Yule model, fractions of light emerge at each reflection cycle. 9 / 20 The emerging fraction of light – Surface reflection rs – First emergence – Second emergence – Third emergence – …n th emergence Clapper-Yule equation (1953) (3.109) 10 / 20 3.8.6 Advanced models Relation the empirical parameter n to physical quantities Point Spread Function – Expresses the density of probability for a photon entering the substrate at location (0,0) to emerge at the location (x,y) (3.110) 11 / 20 Ruckdeschel and Hauser (1978) – Assumed a Gaussian PSF (3.111) where σ is a characteristic scattering length of the photon in the substrate – Yule-Nielsen factor (3.112) where L is a period of the screen – Value of n approaches 1 • The substrate approaches a specular surface (Murray-Davis model) – Value of n approaches 2 • The substrate becomes a perfect diffuser (Clapper-Yule model) 12 / 20 Rogers (1997) – Characteristic scattering length σ is related to • Absorption in the substrate and optical thickness of the substrate – PSF is a series of convolutions whose term are the contribution of the multiple internal reflections occurring in the substrate (3.113) – Yule-Nilesen factors n that are greater than 2.0 13 / 20 Gustavson – Internal PSF is closely approximated by a function has a circular symmetry and a strong radial decay (3.114) where d controls the radial extent of the internal PSF Arney (1997) – Less complex than the PSF convolution – Scattering probability δ i, j for a photon • Enters the substrate through a region covered by the Neugebauer primary j of transmittance T j • Emerge through a region covered by the Neugebauer primary i of transmittance Ti 14 / 20 – Reflectance of a halftone print (3.115) – In the particular case of traditional halftone screens (3.116) where w is an empirical parameter – w is related to σ and L w = 1 − exp[−α (σ / L)] 15 / 20 3.8.7 New mathematical framework for color prediction of halftones Generalization the models – Consider two Neugebauer primaries for the sake of simplicity – Assume that the exchange of photons between inked and noninked areas take place only in the substrate – Assume that the ink layer behaves according to the Kubelka-Munk model Fig. 3.29. A schematic model of the printed surface. 16 / 20 – Extend eq. 3.49 to take several inking levels in to account (3.117) – By intergrating eq. 3.117 between x=0 and x=X (3.118) • Definition of the matrix exponential is given in eq. 3.51 17 / 20 – To take into consideration the multiple internal reflections (eq. 3.66) (3.119) – Optical dot gain affects only the boundary condition at x=0 • we assume that the exchange of photons takes place only in the substrate (3.120) where δ u, v represents the overall probabilit y of a photon entering ink level u and emerging from ink level v 18 / 20 – New prediction model (3.121) First matrix : the Saunderson correction Second matrix : the Kubelka - Munk model of the ink absorbing layer Third matrix : the light scattering in the substrate 19 / 20 – Change of basis matrix for emerging fluxes as function of the incident fluxes (3.122) – Reflectance spectrum (3.123) where i0 = i1 = i and a1 be the inked fraction of area and a0 = 1 − a1 be the non - inked fraction of area 20 / 20