DocumentCode
2694217
Title
Clustering-based subspace SVM ensemble for relevance feedback learning
Author
Ji, Rongrong ; Yao, Hongxun ; Wang, Jicheng ; Xu, Pengfei ; Liu, Xianming
Author_Institution
Visual Intell. Lab., Harbin Inst. of Technol., Harbin
fYear
2008
fDate
June 23 2008-April 26 2008
Firstpage
1221
Lastpage
1224
Abstract
This paper presents a subspace SVM ensemble algorithm for adaptive relevance feedback (RF) learning. Our method deals with the case that userpsilas relevance feedback examples are usually insufficient and overlapped together in feature space, which decreases the learning effectiveness of RF classifiers. To enhance classification efficiency in such case, multiple SVMs are learned by clustering-based training set partition, each of which fits its cluster-specific sample distribution and gives labeling regressions to test samples that fall within this cluster. To adapt features to sample distribution within each cluster, AdaBoost feature selection is conducted onto pyramid Haar of H&I bands in HSI space. In AdaBoost, we evaluate the feature discriminative ability by an entropy-based uncertainty criterion, based on which an eigen feature subspace is constructed in cluster-specific SVM training. Finally, regression results of multiple SVMs are probabilistic assembled to give the final labeling prediction for test image. We compare our cluster-based cascade SVMs (CSS) RF method in COREL 5,000 database with: 1. single SVM; 2. active learning SVM [5]; 3. bootstrap sampling SVM [7]. The superior experimental results demonstrate the efficiency of our algorithm.
Keywords
Ada; Haar transforms; content-based retrieval; eigenvalues and eigenfunctions; entropy; image retrieval; regression analysis; relevance feedback; support vector machines; AdaBoost feature selection; active learning SVM; adaptive relevance feedback learning; bootstrap sampling SVM; cluster-based cascade SVM; cluster-specific sample distribution; clustering-based subspace SVM ensemble; clustering-based training set partition; eigen feature subspace; entropy-based uncertainty criterion; feature discriminative ability; labeling regressions; pyramid Haar; regression results; single SVM; Assembly; Clustering algorithms; Feedback; Labeling; Partitioning algorithms; Radio frequency; Support vector machine classification; Support vector machines; Testing; Uncertainty; SVM; classifier ensemble; classifier sampling; data clustering; image retrieval; relevance feedback;
fLanguage
English
Publisher
ieee
Conference_Titel
Multimedia and Expo, 2008 IEEE International Conference on
Conference_Location
Hannover
Print_ISBN
978-1-4244-2570-9
Electronic_ISBN
978-1-4244-2571-6
Type
conf
DOI
10.1109/ICME.2008.4607661
Filename
4607661
Link To Document