TY - GEN
T1 - Probabilistic visual concept trees
AU - Xie, Lexing
AU - Yan, Rong
AU - Teší, Jelena
AU - Natsev, Apostol
AU - Smith, John R.
PY - 2010
Y1 - 2010
N2 - This paper presents probabilistic visual concept trees, a model for large visual semantic taxonomy structures and its use in visual concept detection. Organizing visual semantic knowledge systematically is one of the key challenges towards large-scale concept detection, and one that is complementary to optimizing visual classification for individual concepts. Semantic concepts have traditionally been treated as isolated nodes, a densely-connected web, or a tree. Our analysis shows that none of these models are sufficient in modeling the typical relationships on a real-world visual taxonomy, and these relationships belong to three broad categories - semantic, appearance and statistics. We propose probabilistic visual concept trees for modeling a taxonomy forest with observation uncertainty. As a Bayesian network with parameter constraints, this model is flexible enough to account for the key assumptions in all three types of taxonomy relations, yet it is robust enough to accommodate expansion or deletion in a taxonomy. Our evaluation results on a large web image dataset show that the classification accuracy has considerably improved upon baselines without, or with only a subset of concept relationships
AB - This paper presents probabilistic visual concept trees, a model for large visual semantic taxonomy structures and its use in visual concept detection. Organizing visual semantic knowledge systematically is one of the key challenges towards large-scale concept detection, and one that is complementary to optimizing visual classification for individual concepts. Semantic concepts have traditionally been treated as isolated nodes, a densely-connected web, or a tree. Our analysis shows that none of these models are sufficient in modeling the typical relationships on a real-world visual taxonomy, and these relationships belong to three broad categories - semantic, appearance and statistics. We propose probabilistic visual concept trees for modeling a taxonomy forest with observation uncertainty. As a Bayesian network with parameter constraints, this model is flexible enough to account for the key assumptions in all three types of taxonomy relations, yet it is robust enough to accommodate expansion or deletion in a taxonomy. Our evaluation results on a large web image dataset show that the classification accuracy has considerably improved upon baselines without, or with only a subset of concept relationships
KW - bayes networks
KW - probalistic classification
KW - visual taxonomy
UR - http://www.scopus.com/inward/record.url?scp=78650994518&partnerID=8YFLogxK
U2 - 10.1145/1873951.1874099
DO - 10.1145/1873951.1874099
M3 - Conference contribution
SN - 9781605589336
T3 - MM'10 - Proceedings of the ACM Multimedia 2010 International Conference
SP - 867
EP - 870
BT - MM'10 - Proceedings of the ACM Multimedia 2010 International Conference
T2 - 18th ACM International Conference on Multimedia ACM Multimedia 2010, MM'10
Y2 - 25 October 2010 through 29 October 2010
ER -