DocumentCode
822576
Title
SemQuery: semantic clustering and querying on heterogeneous features for visual data
Author
Sheikholeslami, Gholamhosein ; Chang, Wendy ; Zhang, Aidong
Author_Institution
Cisco Syst., San Jose, CA, USA
Volume
14
Issue
5
fYear
2002
Firstpage
988
Lastpage
1002
Abstract
The effectiveness of content-based image retrieval can be enhanced using heterogeneous features embedded in the images. However, since the features in texture, color, and shape are generated using different computation methods and thus may require different similarity measurements, the integration of the retrievals on heterogeneous features is a nontrivial task. We present a semantics-based clustering and indexing approach, termed SemQuery, to support visual queries on heterogeneous features of images. Using this approach, the database images are classified based on their heterogeneous features. Each semantic image cluster contains a set of subclusters that are represented by the heterogeneous features that the images contain. An image is included in a semantic cluster if it falls within the scope of all the heterogeneous clusters of the semantic cluster. We also design a neural network model to merge the results of basic queries on individual features. A query processing strategy is then presented to support visual queries on heterogeneous features. An experimental analysis is conducted and presented to demonstrate the effectiveness and efficiency of the proposed approach.
Keywords
content-based retrieval; database indexing; image classification; image retrieval; neural nets; pattern clustering; visual databases; SemQuery; content-based image retrieval; experimental analysis; heterogeneous features; image classification; image color; image database; image shape; image texture; indexing; neural network model; query processing; semantic clustering; similarity measurements; visual data; visual queries; Content based retrieval; Histograms; Image databases; Image retrieval; Indexing; Information retrieval; Shape measurement; Spatial databases; Vectors; Visual databases;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2002.1033769
Filename
1033769
Link To Document