Compartir
Título
Practical RGB-to-XYZ Color Transformation Matrix Estimation under Different Lighting Conditions for Graffiti Documentation
Autor(es)
Palabras clave
colorimetry
color science
graffiti art
image processing
software development
Fecha de publicación
2024-03-07
Editor
Jun Wang
Citación
Molada-Tebar, A.; Verhoeven, G.J.; Hernández-López, D.; González-Aguilera, D. Practical RGB-to-XYZ Color Transformation Matrix Estimation under Different Lighting Conditions for Graffiti Documentation. Sensors 2024, 24, 1743. https://doi.org/10.3390/ s24061743
Resumen
Color data are often required for cultural heritage documentation. These data are typically acquired via standard digital cameras since they facilitate a quick and cost-effective way to extract RGB values from photos. However, cameras’ absolute sensor responses are device-dependent and thus not colorimetric. One way to still achieve relatively accurate color data is via camera
characterization, a procedure which computes a bespoke RGB-to-XYZ matrix to transform cameradependent RGB values into the device-independent CIE XYZ color space. This article applies and assesses camera characterization techniques in heritage documentation, particularly graffiti photographed in the academic project INDIGO. To this end, this paper presents COOLPI (COlor
Operations Library for Processing Images), a novel Python-based toolbox for colorimetric and spectral work, including white-point-preserving camera characterization from photos captured under diverse, real-world lighting conditions. The results highlight the colorimetric accuracy achievable through COOLPI’s color-processing pipelines, affirming their suitability for heritage documentation.
URI
DOI
https://doi.org/10.3390/s24061743
Versión del editor
Aparece en las colecciones













