DocumentCode :
1755334
Title :
A Graph Lattice Approach to Maintaining and Learning Dense Collections of Subgraphs as Image Features
Author :
Saund, E.
Author_Institution :
Intell. Syst. Lab., Palo Alto Res. Center, Palo Alto, CA, USA
Volume :
35
Issue :
10
fYear :
2013
fDate :
Oct. 2013
Firstpage :
2323
Lastpage :
2339
Abstract :
Effective object and scene classification and indexing depend on extraction of informative image features. This paper shows how large families of complex image features in the form of subgraphs can be built out of simpler ones through construction of a graph lattice - a hierarchy of related subgraphs linked in a lattice. Robustness is achieved by matching many overlapping and redundant subgraphs, which allows the use of inexpensive exact graph matching, instead of relying on expensive error-tolerant graph matching to a minimal set of ideal model graphs. Efficiency in exact matching is gained by exploitation of the graph lattice data structure. Additionally, the graph lattice enables methods for adaptively growing a feature space of subgraphs tailored to observed data. We develop the approach in the domain of rectilinear line art, specifically for the practical problem of document forms recognition. We are especially interested in methods that require only one or very few labeled training examples per category. We demonstrate two approaches to using the subgraph features for this purpose. Using a bag-of-words feature vector we achieve essentially single-instance learning on a benchmark forms database, following an unsupervised clustering stage. Further performance gains are achieved on a more difficult dataset using a feature voting method and feature selection procedure.
Keywords :
data structures; database indexing; document image processing; feature extraction; graph theory; image classification; image matching; image retrieval; natural scenes; pattern clustering; unsupervised learning; bag-of-words feature vector; benchmark form database; complex image features; dense subgraph collections learning; document form recognition; feature selection procedure; feature voting method; graph lattice data structure; inexpensive exact graph matching; informative image feature extraction; labeled training; object classification; object indexing; rectilinear line art; scene classification; scene indexing; single-instance learning; subgraph feature space; unsupervised clustering stage; Histograms; Junctions; Lattices; NIST; Support vector machine classification; Vectors; Vocabulary; CMD distance; Graph lattice; document classification; line-art analysis; subgraph matching; weighted voting;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2012.267
Filename :
6583199
Link To Document :
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