DocumentCode
755
Title
Multiview Hessian Regularization for Image Annotation
Author
Weifeng Liu ; Dacheng Tao
Author_Institution
Coll. of Inf. & Control Eng., China Univ. of Pet. (East China), Qingdao, China
Volume
22
Issue
7
fYear
2013
fDate
Jul-13
Firstpage
2676
Lastpage
2687
Abstract
The rapid development of computer hardware and Internet technology makes large scale data dependent models computationally tractable, and opens a bright avenue for annotating images through innovative machine learning algorithms. Semisupervised learning (SSL) therefore received intensive attention in recent years and was successfully deployed in image annotation. One representative work in SSL is Laplacian regularization (LR), which smoothes the conditional distribution for classification along the manifold encoded in the graph Laplacian, however, it is observed that LR biases the classification function toward a constant function that possibly results in poor generalization. In addition, LR is developed to handle uniformly distributed data (or single-view data), although instances or objects, such as images and videos, are usually represented by multiview features, such as color, shape, and texture. In this paper, we present multiview Hessian regularization (mHR) to address the above two problems in LR-based image annotation. In particular, mHR optimally combines multiple HR, each of which is obtained from a particular view of instances, and steers the classification function that varies linearly along the data manifold. We apply mHR to kernel least squares and support vector machines as two examples for image annotation. Extensive experiments on the PASCAL VOC´07 dataset validate the effectiveness of mHR by comparing it with baseline algorithms, including LR and HR.
Keywords
graph theory; image processing; learning (artificial intelligence); least squares approximations; support vector machines; Internet technology; LR-based image annotation; Laplacian regularization; PASCAL VOC´07 dataset; SSL; classification function; color; computer hardware; constant function; graph Laplacian; innovative machine learning algorithms; kernel least squares; large-scale data-dependent models; mHR; multiview Hessian regularization; multiview features; semisupervised learning; shape; support vector machines; texture; Hessian; image annotation; manifold learning; multiview learning; semisupervised learning (SSL);
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2013.2255302
Filename
6490057
Link To Document