2007 IEEE International Conference on Image Processing - San Antonio, Texas, U.S.A. - September 16-19, 2007

Technical Program

Paper Detail

Paper:MA-L6.8
Session:Image and Video Storage and Retrieval I
Time:Monday, September 17, 12:30 - 12:50
Presentation: Lecture
Title: LAPLACIAN AFFINITY PROPAGATION FOR SEMI-SUPERVISED OBJECT CLASSIFICATION
Authors: Yun Fu; University of Illinois at Urbana-Champaign 
 Zhu Li; Motorola Labs 
 Xi Zhou; University of Illinois at Urbana-Champaign 
 Thomas S. Huang; University of Illinois at Urbana-Champaign 
Abstract: We solve the semi-supervised multi-class object classification problem by a graph-based learning algorithm, called Laplacian Affinity Propagation (LAP). The idea is to model and train both labeled and unlabeled data by constructing a local neighborhood affinity graph in a smoothness formulation of Laplacian matrix, based on graph mincuts or harmonic energy minimization. The unknown labels for unlabeled data are inferred from an optimized graph embedding procedure subject to the labeled data. Such label-to-unlabel propagation scheme can provide a closed form solution via a learning framework that is flexible for any new design. LAP integrates embedding and classifier together and gives smooth labels with respect to the underlying manifold structure formed by the training data. Object classification experiments on COIL database demonstrate the effectiveness and applicability of such algorithm.



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