Learning How to Match Fresco Fragments
Eurographics Area Track on Cultural Heritage, April 2011
Abstract
One of the main problems faced during reconstruction of fractured archaeological artifacts is sorting through a
large number of candidate matches between fragments to find the relatively few that are correct. Previous computer
methods for this task provided scoring functions based on a variety of properties of potential matches, including
color and geometric compatibility across fracture surfaces. However, they usually consider only one or at most a
few properties at once, and therefore provide match predictions with very low precision. In this paper, we investigate
a machine learning approach that computes the probability that a match is correct based on the combination
of many features. We explore this machine learning approach for ranking matches in three different sets of fresco
fragments, finding that classifiers based on many match properties can be significantly more effective at ranking
proposed matches than scores based on any single property alone. Our results suggest that it is possible to train
a classifier on match properties in one data set and then use it to rank predicted matches in another data set
effectively. We believe that this approach could be helpful in a variety of cultural heritage reconstruction systems.
Paper
Links
- An updated version of this paper appeard in JOCCH
Citation
Thomas Funkhouser, Hijung Shin, Corey Toler-Franklin, Antonio García Castañeda, Benedict Brown, David Dobkin, Szymon Rusinkiewicz, and Tim Weyrich.
"Learning How to Match Fresco Fragments."
Eurographics Area Track on Cultural Heritage, April 2011.
BibTeX
@inproceedings{Funkhouser:2011:LHT, author = "Thomas Funkhouser and Hijung Shin and Corey Toler-Franklin and Antonio Garc{\'\i}a Casta{\~n}eda and Benedict Brown and David Dobkin and Szymon Rusinkiewicz and Tim Weyrich", title = "Learning How to Match Fresco Fragments", booktitle = "Eurographics Area Track on Cultural Heritage", year = "2011", month = apr }