首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.3; 20060507-13; Graz(AT) >Statistical Priors for Efficient Combinatorial Optimization Via Graph Cuts
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Statistical Priors for Efficient Combinatorial Optimization Via Graph Cuts

机译:通过图割进行有效组合优化的统计先验

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Bayesian inference provides a powerful framework to optimally integrate statistically learned prior knowledge into numerous computer vision algorithms. While the Bayesian approach has been successfully applied in the Markov random field literature, the resulting combinatorial optimization problems have been commonly treated with rather inefficient and inexact general purpose optimization methods such as Simulated Annealing. An efficient method to compute the global optima of certain classes of cost functions defined on binary-valued variables is given by graph min-cuts. In this paper, we propose to reconsider the problem of statistical learning for Bayesian inference in the context of efficient optimization schemes. Specifically, we address the question: Which prior information may be learned while retaining the ability to apply Graph Cut optimization? We provide a framework to learn and impose prior knowledge on the distribution of pairs and triplets of labels. As an illustration, we demonstrate that one can optimally restore binary textures from very noisy images with runtimes on the order of a second while imposing hundreds of statistically learned constraints per pixel.
机译:贝叶斯推理提供了一个强大的框架,可以将统计学习的先验知识最佳地集成到众多计算机视觉算法中。尽管贝叶斯方法已成功地应用于马尔可夫随机领域的文献中,但所产生的组合优化问题通常已通过效率不高且不精确的通用优化方法(如模拟退火)进行了处理。图最小割给出了一种有效的方法,可以计算在二进制值变量上定义的某些类别的成本函数的全局最优值。在本文中,我们建议在有效的优化方案的背景下重新考虑贝叶斯推理的统计学习问题。具体来说,我们解决了一个问题:在保留应用Graph Cut优化功能的同时可以了解哪些先验信息?我们提供了一个框架,用于学习标签的成对和三联体分布并对其施加先验知识。作为说明,我们演示了一个人可以用一秒钟的时间从运行时非常嘈杂的图像中最佳恢复二进制纹理,同时每个像素施加数百个统计学习约束。

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