Optimizing binary MRFs via extended roof duality
2007 IEEE conference on computer vision and pattern recognition, 2007•ieeexplore.ieee.org
Many computer vision applications rely on the efficient optimization of challenging, so-called
non-submodular, binary pairwise MRFs. A promising graph cut based approach for
optimizing such MRFs known as" roof duality" was recently introduced into computer vision.
We study two methods which extend this approach. First, we discuss an efficient
implementation of the" probing" technique introduced recently by Bows et al.(2006). It
simplifies the MRF while preserving the global optimum. Our code is 400-700 faster on some …
non-submodular, binary pairwise MRFs. A promising graph cut based approach for
optimizing such MRFs known as" roof duality" was recently introduced into computer vision.
We study two methods which extend this approach. First, we discuss an efficient
implementation of the" probing" technique introduced recently by Bows et al.(2006). It
simplifies the MRF while preserving the global optimum. Our code is 400-700 faster on some …
Many computer vision applications rely on the efficient optimization of challenging, so-called non-submodular, binary pairwise MRFs. A promising graph cut based approach for optimizing such MRFs known as "roof duality" was recently introduced into computer vision. We study two methods which extend this approach. First, we discuss an efficient implementation of the "probing" technique introduced recently by Bows et al. (2006). It simplifies the MRF while preserving the global optimum. Our code is 400-700 faster on some graphs than the implementation of the work of Bows et al. (2006). Second, we present a new technique which takes an arbitrary input labeling and tries to improve its energy. We give theoretical characterizations of local minima of this procedure. We applied both techniques to many applications, including image segmentation, new view synthesis, super-resolution, diagram recognition, parameter learning, texture restoration, and image deconvolution. For several applications we see that we are able to find the global minimum very efficiently, and considerably outperform the original roof duality approach. In comparison to existing techniques, such as graph cut, TRW, BP, ICM, and simulated annealing, we nearly always find a lower energy.
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