DocumentCode :
3601208
Title :
Scene Recognition by Manifold Regularized Deep Learning Architecture
Author :
Yuan Yuan ; Lichao Mou ; Xiaoqiang Lu
Author_Institution :
State Key Lab. of Transient Opt. & Photonics, Xi´an Inst. of Opt. & Precision Mech., Xi´an, China
Volume :
26
Issue :
10
fYear :
2015
Firstpage :
2222
Lastpage :
2233
Abstract :
Scene recognition is an important problem in the field of computer vision, because it helps to narrow the gap between the computer and the human beings on scene understanding. Semantic modeling is a popular technique used to fill the semantic gap in scene recognition. However, most of the semantic modeling approaches learn shallow, one-layer representations for scene recognition, while ignoring the structural information related between images, often resulting in poor performance. Modeled after our own human visual system, as it is intended to inherit humanlike judgment, a manifold regularized deep architecture is proposed for scene recognition. The proposed deep architecture exploits the structural information of the data, making for a mapping between visible layer and hidden layer. By the proposed approach, a deep architecture could be designed to learn the high-level features for scene recognition in an unsupervised fashion. Experiments on standard data sets show that our method outperforms the state-of-the-art used for scene recognition.
Keywords :
computer vision; image recognition; learning (artificial intelligence); computer vision; human visual system; manifold regularized deep learning architecture; scene recognition; semantic modeling; semantic modeling approach; structural information; Computer architecture; Feature extraction; Kernel; Manifolds; Semantics; Sparse matrices; Visualization; Deep architecture; machine learning; manifold kernel; manifold regularization; scene recognition; scene recognition.;
fLanguage :
English
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
Publisher :
ieee
ISSN :
2162-237X
Type :
jour
DOI :
10.1109/TNNLS.2014.2359471
Filename :
7018034
Link To Document :
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