DocumentCode
50957
Title
Multiview Vector-Valued Manifold Regularization for Multilabel Image Classification
Author
Yong Luo ; Dacheng Tao ; Chang Xu ; Chao Xu ; Hong Liu ; Yonggang Wen
Author_Institution
Key Lab. of Machine Perception (Minist. of Educ.), Peking Univ., Beijing, China
Volume
24
Issue
5
fYear
2013
fDate
May-13
Firstpage
709
Lastpage
722
Abstract
In computer vision, image datasets used for classification are naturally associated with multiple labels and comprised of multiple views, because each image may contain several objects (e.g., pedestrian, bicycle, and tree) and is properly characterized by multiple visual features (e.g., color, texture, and shape). Currently, available tools ignore either the label relationship or the view complementarily. Motivated by the success of the vector-valued function that constructs matrix-valued kernels to explore the multilabel structure in the output space, we introduce multiview vector-valued manifold regularization (MV3MR) to integrate multiple features. MV3MR exploits the complementary property of different features and discovers the intrinsic local geometry of the compact support shared by different features under the theme of manifold regularization. We conduct extensive experiments on two challenging, but popular, datasets, PASCAL VOC´ 07 and MIR Flickr, and validate the effectiveness of the proposed MV3MR for image classification.
Keywords
computer vision; feature extraction; image classification; matrix algebra; vectors; MIR Flickr datasets; MV3MR; PASCAL datasets; VOC´ 07 datasets; complementary property; computer vision; image datasets; intrinsic local geometry discovery; label relationship; matrix-valued kernel construction; multilabel image classification; multiview vector-valued manifold regularization; vector-valued function; visual features; Correlation; Image color analysis; Kernel; Laplace equations; Manifolds; Optimization; Support vector machines; Image classification; manifold; multilabel; multiview; semisupervised;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2238682
Filename
6459040
Link To Document