Back to articles
Proceedings Paper
Volume: 4 | Article ID: 16
Image
Investigation on Color Characterization Methods for 3D Printer
  DOI :  10.2352/lim.2023.4.1.18  Published OnlineJune 2023
Abstract
Abstract

In this study, the third order polynomial regression (PR) and deep neural networks (DNN) were used to perform color characterization from CMYK to CIELAB color space, based on a dataset consisting of 2016 color samples which were produced using a Stratasys J750 3D color printer. Five output variables including CIE XYZ, the logarithm of CIE XYZ, CIELAB, spectra reflectance and the principal components of spectra were compared for the performance of printer color characterization. The 10-fold cross validation was used to evaluate the accuracy of the models developed using different approaches, and CIELAB color differences were calculated with D65 illuminant. In addition, the effect of different training data sizes on predictive accuracy was investigated. The results showed that the DNN method produced much smaller color differences than the PR method, but it is highly dependent on the amount of training data. In addition, the logarithm of CIE XYZ as the output provided higher accuracy than CIE XYZ.

Subject Areas :
Views 40
Downloads 9
 articleview.views 40
 articleview.downloads 9
  Cite this article 

Ruili He, Kaida Xiao, Michael Pointer, Yoav Bressler, Qiang Liu, "Investigation on Color Characterization Methods for 3D Printerin London Imaging Meeting,  2023,  pp 71 - 75,  https://doi.org/10.2352/lim.2023.4.1.18

 Copy citation
  Copyright statement 
Copyright 2023
lim
London Imaging Meeting
2694-118X
2694-118X
Society for Imaging Science and Technology
IS&T 7003 Kilworth Lane, Springfield, VA 22151 USA