DocumentCode
80370
Title
Image Segmentation UsingHigher-Order Correlation Clustering
Author
Sungwoong Kim ; Yoo, Choong D. ; Nowozin, Sebastian ; Kohli, Pushmeet
Author_Institution
Qualcomm Res. Korea, Seoul, South Korea
Volume
36
Issue
9
fYear
2014
fDate
Sept. 2014
Firstpage
1761
Lastpage
1774
Abstract
In this paper, a hypergraph-based image segmentation framework is formulated in a supervised manner for many high-level computer vision tasks. To consider short- and long-range dependency among various regions of an image and also to incorporate wider selection of features, a higher-order correlation clustering (HO-CC) is incorporated in the framework. Correlation clustering (CC), which is a graph-partitioning algorithm, was recently shown to be effective in a number of applications such as natural language processing, document clustering, and image segmentation. It derives its partitioning result from a pairwise graph by optimizing a global objective function such that it simultaneously maximizes both intra-cluster similarity and inter-cluster dissimilarity. In the HO-CC, the pairwise graph which is used in the CC is generalized to a hypergraph which can alleviate local boundary ambiguities that can occur in the CC. Fast inference is possible by linear programming relaxation, and effective parameter learning by structured support vector machine is also possible by incorporating a decomposable structured loss function. Experimental results on various data sets show that the proposed HO-CC outperforms other state-of-the-art image segmentation algorithms. The HO-CC framework is therefore an efficient and flexible image segmentation framework.
Keywords
correlation methods; image segmentation; linear programming; support vector machines; graph partitioning algorithm; higher order correlation clustering; hypergraph based image segmentation framework; linear programming relaxation; pairwise graph; parameter learning; support vector machine; Clustering algorithms; Correlation; Image edge detection; Image segmentation; Inference algorithms; Partitioning algorithms; Vectors; Image segmentation; correlation clustering; structural learning;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2014.2303095
Filename
6727483
Link To Document