Title
Semantic discriminative projections for image retrieval
Abstract
Subspace learning has attracted much attention in image retrieval. In this paper, we present a subspace learning approach called Semantic Discriminative Projections (SDP), which learns the semantic subspace through integrating the descriptive information and discriminative information. We first construct one graph to characterize the similarity of contented-based features, another to describe the semantic dissimilarity. Then we formulate constrained optimization problem with a penalized difference form. Therefore, we can avoid the singularity problem and get the optimal dimensionality while learning a semantic subspace. Furthermore, SDP may be conducted in the original space or in the reproducing kernel Hilbert space into which images are mapped. This gives rise to kernel SDP. We investigate extensive experiments to verify the effectiveness of our approach. Experimental results show that our approach achieves better retrieval performance than state-of-art methods.
Year
DOI
Venue
2008
10.1007/978-3-540-68636-1_4
AIRS
Keywords
Field
DocType
semantic dissimilarity,better retrieval performance,kernel sdp,semantic discriminative projection,semantic subspace,optimization problem,image retrieval,discriminative information,subspace learning,original space,descriptive information,reproducing kernel hilbert space
Kernel (linear algebra),Graph,Subspace topology,Pattern recognition,Computer science,Singularity,Image retrieval,Curse of dimensionality,Artificial intelligence,Discriminative model,Machine learning,Reproducing kernel Hilbert space
Conference
Volume
Issue
ISSN
4993
null
0302-9743
ISBN
Citations 
PageRank 
3-540-68633-9
0
0.34
References 
Authors
19
3
Name
Order
Citations
PageRank
He-Ping Song173.32
Qun-Sheng Yang201.01
Yinwei Zhan310313.65