Spectral Reconstruction from RGB Imagery: A Potential Option for Infinite Spectral Data?

Author:

Fsian Abdelhamid1ORCID,Thomas Jean-Baptiste12,Hardeberg Jon2ORCID,Gouton Pierre1

Affiliation:

1. Imagerie et Vision Artificielle (ImVIA) Laboratory, Department Informatique, Electronique, Mécanique (IEM), Université de Bourgogne, 21000 Dijon, France

2. Colourlab, Department of Computer Science, Norwegian University of Science and Technology (NTNU), 2815 Gjøvik, Norway

Abstract

Spectral imaging has revolutionisedvarious fields by capturing detailed spatial and spectral information. However, its high cost and complexity limit the acquisition of a large amount of data to generalise processes and methods, thus limiting widespread adoption. To overcome this issue, a body of the literature investigates how to reconstruct spectral information from RGB images, with recent methods reaching a fairly low error of reconstruction, as demonstrated in the recent literature. This article explores the modification of information in the case of RGB-to-spectral reconstruction beyond reconstruction metrics, with a focus on assessing the accuracy of the reconstruction process and its ability to replicate full spectral information. In addition to this, we conduct a colorimetric relighting analysis based on the reconstructed spectra. We investigate the information representation by principal component analysis and demonstrate that, while the reconstruction error of the state-of-the-art reconstruction method is low, the nature of the reconstructed information is different. While it appears that the use in colour imaging comes with very good performance to handle illumination, the distribution of information difference between the measured and estimated spectra suggests that caution should be exercised before generalising the use of this approach.

Publisher

MDPI AG

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