The sixth-century Basilica of San Vitale in Ravenna, Italy, once featured intricate circular colored glass windows that illuminated its interior. Although these windows are now lost, several fragments were recovered during recent restorations. Unfortunately, reconstructing the original glass windows from these fragments is extremely complex and time-consuming, requiring the use of specialized expertise. Therefore, the development of automatic reconstruction techniques based on Artificial Intelligence is particularly important and challenging, due to, for instance, the presence of uniform color, damaged glass edges, and many fragment outliers. In this direction, the San Vitale Challenge was organized to gather the best methods and algorithms, as described and summarized in this paper. The challenge, split into several sub-tracks of increasing difficulty and realism, received the submission of several solutions, ranging from more classical computer vision algorithms to purely deep learning-based approaches, whose results are quantitatively evaluated and compared. In the last part of the paper, directions for future developments of such systems are discussed.

San Vitale Challenge: Automatic Reconstruction of Ancient Colored Glass Windows / Di Domenico, N.; Borghi, G.; Franco, A.; Boschetti, M.; Giacomini, F.; Barzaghi, S.; Ferucci, S.; Zambruno, S.; Mularoni, L.; Gao, Q.; Che, C.; Li, G.; Zu, Y.; Hao, J.; Zhang, J.; Ducz, A.; Gego, L.; Imeri, K.; Nemkin, V.; Rakhmatillaev, A.; Szatmari, S.; Rowan, W.. - 15628:(2025), pp. 263-278. ( 18th European Conference on Computer Vision Workshops Milan Sep 29th - Oct 4th, 2024) [10.1007/978-3-031-91572-7_16].

San Vitale Challenge: Automatic Reconstruction of Ancient Colored Glass Windows

Borghi G.;Franco A.;Boschetti M.;
2025

Abstract

The sixth-century Basilica of San Vitale in Ravenna, Italy, once featured intricate circular colored glass windows that illuminated its interior. Although these windows are now lost, several fragments were recovered during recent restorations. Unfortunately, reconstructing the original glass windows from these fragments is extremely complex and time-consuming, requiring the use of specialized expertise. Therefore, the development of automatic reconstruction techniques based on Artificial Intelligence is particularly important and challenging, due to, for instance, the presence of uniform color, damaged glass edges, and many fragment outliers. In this direction, the San Vitale Challenge was organized to gather the best methods and algorithms, as described and summarized in this paper. The challenge, split into several sub-tracks of increasing difficulty and realism, received the submission of several solutions, ranging from more classical computer vision algorithms to purely deep learning-based approaches, whose results are quantitatively evaluated and compared. In the last part of the paper, directions for future developments of such systems are discussed.
2025
18th European Conference on Computer Vision Workshops
Milan
Sep 29th - Oct 4th, 2024
15628
263
278
Di Domenico, N.; Borghi, G.; Franco, A.; Boschetti, M.; Giacomini, F.; Barzaghi, S.; Ferucci, S.; Zambruno, S.; Mularoni, L.; Gao, Q.; Che, C.; Li, G....espandi
San Vitale Challenge: Automatic Reconstruction of Ancient Colored Glass Windows / Di Domenico, N.; Borghi, G.; Franco, A.; Boschetti, M.; Giacomini, F.; Barzaghi, S.; Ferucci, S.; Zambruno, S.; Mularoni, L.; Gao, Q.; Che, C.; Li, G.; Zu, Y.; Hao, J.; Zhang, J.; Ducz, A.; Gego, L.; Imeri, K.; Nemkin, V.; Rakhmatillaev, A.; Szatmari, S.; Rowan, W.. - 15628:(2025), pp. 263-278. ( 18th European Conference on Computer Vision Workshops Milan Sep 29th - Oct 4th, 2024) [10.1007/978-3-031-91572-7_16].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1382892
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