Exploring the Potential of Multispectral Imaging for Automatic Clustering of Archeological Wall Painting Fragments
Academic Article
Publication Date:
2026
abstract:
The digital reconstruction of damaged archeological wall paintings is a challenging task due to severe material degradation, high fragmentation, and the lack of reference images. A crucial preliminary step is the separation and grouping of fragments originating from different wall paintings, which are often found mixed together at archeological sites. To address this issue, we explored the potential of multispectral imaging (MSI) for unsupervised fragment clustering, aiming to assess whether integrating multiple spectral bands can enhance fragment discrimination compared to using the visible band alone. As a test set, we examined five groups of wall painting fragments from a Roman domus (1st c. BC–1st c. AD) provided by the Archaeological Museum of Cremona (Italy). Images were acquired using the Hypercolorimetric Multispectral Imaging (HMI) system developed by Profilocolore® Srl (Rome, Italy). Specifically, we considered visible reflectance (VIS), infrared reflectance (IR), infrared false color (IRFC), and Ultraviolet-induced Fluorescence (UVF) images. Through a systematic benchmarking study, we compared several state-of-the-art feature extraction and clustering methods across single- and multi-band configurations. Results show that combining MSI data can substantially enhance the system’s ability to correctly separate and group fragments, indicating a promising direction for future research.
Iris type:
1.1 Articolo in rivista
Keywords:
multispectral imaging; UV fluorescence; infrared reflectance; clustering; machine learning; deep learning; Roman wall painting
List of contributors:
Dondi, Piercarlo; Cascone, Lucia; Delledonne, Chiara; Albano, Michela; Mariani, Elena; Volonté, Marina; Malagodi, Marco; Fiocco, Giacomo
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