ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences (Oct 2024)

Spectral Unmixing of Pigments on Surface of Painted Artefacts Considering Spectral Variability

  • Y. Wang,
  • Y. Wang,
  • S. Lyu,
  • S. Lyu,
  • B. Ning,
  • D. Yan,
  • M. Hou,
  • M. Hou,
  • P. Sun,
  • P. Sun,
  • L. Li

DOI
https://doi.org/10.5194/isprs-annals-X-4-2024-403-2024
Journal volume & issue
Vol. X-4-2024
pp. 403 – 409

Abstract

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Painted artefacts, such as murals and paintings, are the treasures of human civilization. Pigment is an important component of their surfaces. It is crucial to study the composition and proportion of pigments on the surface of painted artefacts for the field of heritage conservation. In this study, hyperspectral remote sensing was used to invert the abundance of mixed pigments by spectral unmixing. Spectral variability effects are often present in hyperspectral images. Hyperspectral images of cultural artefacts also suffer from spectral variability due to factors such as particle size and impurities within the pigment, and acquisition conditions. Therefore, spectral variability was incorporated into the Linear Mixed Model of the pigment spectral unmixing. The unmixing methods are classified into two categories based on whether or not spectral libraries are used. In the experiment, computer synthesized data and laboratory-made sample blocks of mixed pigments, which mixed with different ratios of Azurite and Malachite, were selected as validation data. Five commonly used algorithms for solving the spectral variability problem, namely MESMA, Fractional Sparse SU, ELMM, RUSAL, and BCM, are used for pigment unmixing and compared with FCLS, which does not consider spectral variability. The results show that ELMM has the highest unmixing accuracy of aRMSE and xRMSE compared to other methods. At the same time, it can be seen from the metric of SAM that ELMM is able to extract reliable endmember variability spectral, which is more suitable for solving the problem of spectral variability in pigment unmixing. Finally, we apply ELMM to real artefacts Yungang Grottoes mural paintings, and obtain a lower xRMSE than FCLS, which improves the unmixing accuracy.