Login / Signup

Spectral Reconstruction Using an Iteratively Reweighted Regulated Model from Two Illumination Camera Responses.

Zhen LiuKaida XiaoMichael R PointerQiang LiuChangjun LiRuili HeXuejun Xie
Published in: Sensors (Basel, Switzerland) (2021)
An improved spectral reflectance estimation method was developed to transform captured RGB images to spectral reflectance. The novelty of our method is an iteratively reweighted regulated model that combines polynomial expansion signals, which was developed for spectral reflectance estimation, and a cross-polarized imaging system, which is used to eliminate glare and specular highlights. Two RGB images are captured under two illumination conditions. The method was tested using ColorChecker charts. The results demonstrate that the proposed method could make a significant improvement of the accuracy in both spectral and colorimetric: it can achieve 23.8% improved accuracy in mean CIEDE2000 color difference, while it achieves 24.6% improved accuracy in RMS error compared with classic regularized least squares (RLS) method. The proposed method is sufficiently accurate in predicting the spectral properties and their performance within an acceptable range, i.e., typical customer tolerance of less than 3 DE units in the graphic arts industry.
Keyphrases
  • optical coherence tomography
  • dual energy
  • deep learning
  • gold nanoparticles
  • convolutional neural network
  • transcription factor
  • mass spectrometry
  • high speed
  • fluorescence imaging