Abstract
The increasing interest in digital preservation of cultural heritage has led to ARTDET, a machine learning software for automated detection of deterioration in easel paintings. This web application uses a pre-trained Mask R-CNN model to detect Lacune (areas of missing paint, resulting in visible support panel) from the loss of the Painting Layer (LPL) and stucco repairs. ARTDET leverages high-resolution images annotated by expert restorers. The software achieved 80.4 % recall for LPL and stucco, with a 99 % confidence score in detected damages. Available as open access resource, ARTDET aids conservators and researchers in preserving invaluable artworks.
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Garcia-Moreno, F. M., Alcaraz, J. C., del Castillo de la Fuente, J. M., Rodríguez-Simón, L. R., & Hurtado-Torres, M. V. (2024). ARTDET: Machine learning software for automated detection of art deterioration in easel paintings. SoftwareX, 28. https://doi.org/10.1016/j.softx.2024.101917
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