提升拉格朗日松弛中的凸共轭:连续马尔可夫随机场的一种可处理方法

Hartmut Bauermeister, Emanuel Laude, T. Möllenhoff, M. Moeller, D. Cremers
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引用次数: 7

摘要

非凸优化中的对偶分解方法可能存在对偶间隙。当将它们直接应用于具有连续状态空间的马尔可夫随机场(MRF)中的映射推理等非凸问题时,这提出了一个挑战。为了消除这种差距,本文考虑在测度空间中对原始的非凸任务进行重新表述。然后,通过对偶中的分段多项式离散得到一个半无穷维的重表述。我们提供了由对偶离散引起的原始问题背后的几何直觉,并绘制了与力矩空间优化的联系。与现有的离散化受到网格偏差的影响相比,我们表明分段多项式离散化更好地保留了问题的连续性质。利用最优输运理论和凸代数几何的结果,将半无限规划简化为有限规划,并给出了基于半定规划的实际实现。我们从实验和理论上证明,该方法成功地减小了对偶性差距。为了展示我们方法的可扩展性,我们将其应用于两幅图像之间的立体匹配问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lifting the Convex Conjugate in Lagrangian Relaxations: A Tractable Approach for Continuous Markov Random Fields
Dual decomposition approaches in nonconvex optimization may suffer from a duality gap. This poses a challenge when applying them directly to nonconvex problems such as MAP-inference in a Markov random field (MRF) with continuous state spaces. To eliminate such gaps, this paper considers a reformulation of the original nonconvex task in the space of measures. This infinite-dimensional reformulation is then approximated by a semi-infinite one, which is obtained via a piecewise polynomial discretization in the dual. We provide a geometric intuition behind the primal problem induced by the dual discretization and draw connections to optimization over moment spaces. In contrast to existing discretizations which suffer from a grid bias, we show that a piecewise polynomial discretization better preserves the continuous nature of our problem. Invoking results from optimal transport theory and convex algebraic geometry we reduce the semi-infinite program to a finite one and provide a practical implementation based on semidefinite programming. We show, experimentally and in theory, that the approach successfully reduces the duality gap. To showcase the scalability of our approach, we apply it to the stereo matching problem between two images.
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