DocumentCode
1526067
Title
Random Walks on Graphs for Salient Object Detection in Images
Author
Gopalakrishnan, Viswanath ; Hu, Yiqun ; Rajan, Deepu
Author_Institution
Centre for Multimedia & Network Technol., Nanyang Technol. Univ., Singapore, Singapore
Volume
19
Issue
12
fYear
2010
Firstpage
3232
Lastpage
3242
Abstract
We formulate the problem of salient object detection in images as an automatic labeling problem on the vertices of a weighted graph. The seed (labeled) nodes are first detected using Markov random walks performed on two different graphs that represent the image. While the global properties of the image are computed from the random walk on a complete graph, the local properties are computed from a sparse k-regular graph. The most salient node is selected as the one which is globally most isolated but falls on a locally compact object. A few background nodes and salient nodes are further identified based upon the random walk based hitting time to the most salient node. The salient nodes and the background nodes will constitute the labeled nodes. A new graph representation of the image that represents the saliency between nodes more accurately, the “pop-out graph” model, is computed further based upon the knowledge of the labeled salient and background nodes. A semisupervised learning technique is used to determine the labels of the unlabeled nodes by optimizing a smoothness objective label function on the newly created “pop-out graph” model along with some weighted soft constraints on the labeled nodes.
Keywords
Markov processes; graph theory; learning (artificial intelligence); object detection; Markov random walks; automatic labeling problem; background nodes; hitting time; pop-out graph model; salient node; salient object detection; seed labeled nodes; semisupervised learning technique; sparse k-regular graph; weighted graph; weighted soft constraints; Computer networks; Constraint optimization; Digital cameras; Electronic mail; Humans; Labeling; Object detection; Permission; Semisupervised learning; Variable speed drives; Graph modeling; random walks; semisupervised learning; visual saliency; Algorithms; Computer Simulation; Image Enhancement; Image Processing, Computer-Assisted; Markov Chains; Pattern Recognition, Automated;
fLanguage
English
Journal_Title
Image Processing, IEEE Transactions on
Publisher
ieee
ISSN
1057-7149
Type
jour
DOI
10.1109/TIP.2010.2053940
Filename
5497152
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