Visible Light Spectrum Extraction from Diffraction Images by Deconvolution and the Cepstrum

Mikko Evert Toivonen, Topi Talvitie, Chang Rajani, Arto Klami

Research output: Contribution to journalArticleScientificpeer-review

Abstract

Accurate color determination in variable lighting conditions is difficult and requires special devices. We considered the task of extracting the visible light spectrum using ordinary camera sensors, to facilitate low-cost color measurements using consumer equipment. The approach uses a diffractive element attached to a standard camera and a computational algorithm for forming the light spectrum from the resulting diffraction images. We present two machine learning algorithms for this task, based on alternative processing pipelines using deconvolution and cepstrum operations, respectively. The proposed methods were trained and evaluated on diffraction images collected using three cameras and three illuminants to demonstrate the generality of the approach, measuring the quality by comparing the recovered spectra against ground truth measurements collected using a hyperspectral camera. We show that the proposed methods are able to reconstruct the spectrum, and, consequently, the color, with fairly good accuracy in all conditions, but the exact accuracy depends on the specific camera and lighting conditions. The testing procedure followed in our experiments suggests a high degree of confidence in the generalizability of our results; the method works well even for a new illuminant not seen in the development phase.

Original languageEnglish
Article number166
JournalJournal of Imaging
Volume7
Issue number9
Number of pages25
ISSN2313-433X
DOIs
Publication statusPublished - Sept 2021
MoE publication typeA1 Journal article-refereed

Fields of Science

  • 113 Computer and information sciences
  • spectrum
  • spectrometer
  • cepstrum
  • deconvolution
  • diffraction imaging

Cite this