Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
526063 | Computer Vision and Image Understanding | 2011 | 12 Pages |
We investigate dual decomposition approaches for optimization problems arising in low-level vision. Dual decomposition can be used to parallelize existing algorithms, reduce memory requirements and to obtain approximate solutions of hard problems. An extensive set of experiments are performed for a variety of application problems including graph cut segmentation, curvature regularization and more generally the optimization of MRFs. We demonstrate that the technique can be useful for desktop computers, graphical processing units and supercomputer clusters. To facilitate further research, an implementation of the decomposition methods is made publicly available.
► Parallel minimum cut using dual decomposition. ► MRF inference on graphical processing units. ► Parallel inference for general MRFs.