Contributo in atti di convegno, 2023, ENG, 10.1117/12.2674888

Ancient coins' surface inspection with web-based neural RTI visualization

Righetto L.; Gobbetti E.; Ponchio F.; Traviglia A.; De Bernardin M.; Giachetti A.

Università di Verona, Verona, Italy; CRS4 Visual Computing, Italy; CNR-ISTI, Pisa, Italy; Istituto Italiano di Tecnologia, Italy; Istituto Italiano di Tecnologia, Italy; Università di Verona, Verona, Italy

The use of neural encodings has the potential to replace the commonly used polynomial fitting in the analysis of artwork surface based on Reflectance Transformation Imaging (RTI), as it has proved to result in more compact encoding with better relight quality, but it is still not widely used due to the lack of efficient implementations available to practitioners. In this work, we describe an optimized system to encode/decode neural relightable images providing interactive visualization in a web interface allowing multi-layer visualization and annotation. To develop it, we performed several experiments testing different decoder architectures and input processing pipelines, evaluating the quality of the results on specific benchmarks to find the optimal tradeoff between relighting quality and efficiency. A specific decoder has been then implemented for the web and integrated into an advanced visualisation tool. The system has been tested for the analysis of a group of ancient Roman bronze coins that present scarce readability and varying levels of preservation and that have been acquired with a multispectral light dome. Their level of corrosion and degradation, which in some cases hinders the recognition of the images, numerals, or text represented on them, makes the system testing particularly challenging and complex. Testing on such a real case scenario, however, enables us to determine the actual improvement that this new RTI visualization tool can offer to numismatists in their ability to identify the coins.

SPIE Optical Metrology, pp. 12620:0D–?, Munich, Germany, 26-29/06/2023

Keywords

Visualization, RGB color model, Education and training, Cultural heritage, Reflectrivity, Ultraviolet radiation

CNR authors

Ponchio Federico

CNR institutes

ISTI – Istituto di scienza e tecnologie dell'informazione "Alessandro Faedo"

ID: 491101

Year: 2023

Type: Contributo in atti di convegno

Creation: 2024-01-03 18:09:03.000

Last update: 2024-01-08 14:32:36.000

CNR authors

External IDs

CNR OAI-PMH: oai:it.cnr:prodotti:491101

DOI: 10.1117/12.2674888

Scopus: 2-s2.0-85172902482

ISI Web of Science (WOS): 001066713700011