DocumentCode :
939135
Title :
Generalizing Swendsen-Wang to sampling arbitrary posterior probabilities
Author :
Barbu, Adrian ; Zhu, Song-Chun
Author_Institution :
Dept. of Comput. Sci. & Stat., California Univ., Los Angeles, CA, USA
Volume :
27
Issue :
8
fYear :
2005
Firstpage :
1239
Lastpage :
1253
Abstract :
Many vision tasks can be formulated as graph partition problems that minimize energy functions. For such problems, the Gibbs sampler provides a general solution but is very slow, while other methods, such as Ncut and graph cuts are computationally effective but only work for specific energy forms and are not generally applicable. In this paper, we present a new inference algorithm that generalizes the Swendsen-Wang method to arbitrary probabilities defined on graph partitions. We begin by computing graph edge weights, based on local image features. Then, the algorithm iterates two steps: (1) graph clustering - it forms connected components by cutting the edges probabilistically based on their weights; (2) graph relabeling - it selects one connected component and flips probabilistically, the coloring of all vertices in the component simultaneously. Thus, it realizes the split, merge, and regrouping of a "chunk" of the graph, in contrast to Gibbs sampler that flips a single vertex. We prove that this algorithm simulates ergodic and reversible Markov chain jumps in the space of graph partitions and is applicable to arbitrary posterior probabilities or energy functions defined on graphs. We demonstrate the algorithm on two typical problems in computer vision-image segmentation and stereo vision. Experimentally, we show that it is 100-400 times faster in CPU time than the classical Gibbs sampler and 20-40 times faster then the DDMCMC segmentation algorithm. For stereo, we compare performance with graph cuts and belief propagation. We also show that our algorithm can automatically infer generative models and obtain satisfactory results (better than the graphic cuts or belief propagation) in the same amount of time.
Keywords :
Markov processes; computer vision; graph theory; image segmentation; pattern clustering; probability; statistical analysis; stereo image processing; Gibbs sampler; Swendsen-Wang generalization; arbitrary posterior probabilities; computer vision-image segmentation; energy function minimization; graph clustering; graph partition problems; graph relabeling; inference algorithm; reversible Markov chain jumps; stereo vision; Bayesian methods; Belief propagation; Clustering algorithms; Computer vision; Image segmentation; Inference algorithms; Partitioning algorithms; Physics; Sampling methods; Stereo vision; Bayesian inference; Index Terms- Swendsen-Wang; Markov chain Monte Carlo; cluster sampling; image segmentation; stereo matching.; Algorithms; Artificial Intelligence; Cluster Analysis; Computer Graphics; Computer Simulation; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Information Storage and Retrieval; Models, Statistical; Numerical Analysis, Computer-Assisted; Pattern Recognition, Automated; Photogrammetry; Signal Processing, Computer-Assisted; Subtraction Technique;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2005.161
Filename :
1453512
Link To Document :
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