DocumentCode
50412
Title
Semi-Supervised Multitask Learning for Scene Recognition
Author
Xiaoqiang Lu ; Xuelong Li ; Lichao Mou
Author_Institution
Center for Opt. IMagery Anal. & Learning, Xi´an Inst. of Opt. & Precision Mech., Xi´an, China
Volume
45
Issue
9
fYear
2015
fDate
Sept. 2015
Firstpage
1967
Lastpage
1976
Abstract
Scene recognition has been widely studied to understand visual information from the level of objects and their relationships. Toward scene recognition, many methods have been proposed. They, however, encounter difficulty to improve the accuracy, mainly due to two limitations: 1) lack of analysis of intrinsic relationships across different scales, say, the initial input and its down-sampled versions and 2) existence of redundant features. This paper develops a semi-supervised learning mechanism to reduce the above two limitations. To address the first limitation, we propose a multitask model to integrate scene images of different resolutions. For the second limitation, we build a model of sparse feature selection-based manifold regularization (SFSMR) to select the optimal information and preserve the underlying manifold structure of data. SFSMR coordinates the advantages of sparse feature selection and manifold regulation. Finally, we link the multitask model and SFSMR, and propose the semi-supervised learning method to reduce the two limitations. Experimental results report the improvements of the accuracy in scene recognition.
Keywords
feature selection; image recognition; learning (artificial intelligence); SFSMR; manifold data structure; scene image recognition; semisupervised multitask learning mechanism; sparse feature selection-based manifold regularization; visual information; Accuracy; Feature extraction; Image recognition; Image resolution; Manifolds; Semantics; Visualization; Manifold regularized; multitask learning; scene recognition; sparse selection;
fLanguage
English
Journal_Title
Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
2168-2267
Type
jour
DOI
10.1109/TCYB.2014.2362959
Filename
6963417
Link To Document