Inferring M-Best Diverse Labelings In A Single One

2015 IEEE International Conference on Computer Vision (ICCV)(2015)

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摘要
We consider the task of finding M-best diverse solutions in a graphical model. In a previous work by Batra et al. an algorithmic approach for finding such solutions was proposed, and its usefulness was shown in numerous applications. Contrary to previous work we propose a novel formulation of the problem in form of a single energy minimization problem in a specially constructed graphical model. We show that the method of Batra et al. can be considered as a greedy approximate algorithm for our model, whereas we introduce an efficient specialized optimization technique for it, based on alpha-expansion. We evaluate our method on two application scenarios, interactive and semantic image segmentation, with binary and multiple labels. In both cases we achieve considerably better error rates than state-of-the art diversity methods. Furthermore, we empirically discover that in the binary label case we were able to reach global optimality for all test instances.
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关键词
M-best diverse labelings,graphical model,single energy minimization problem,greedy approximate algorithm,specialized optimization technique,alpha-expansion,application scenarios,interactive image segmentation,semantic image segmentation,binary labels,multiple labels,global optimality
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