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Markov Chain Monte Carlo Combined with Deterministic Methods for Markov Random Field Optimization

机译:马尔可夫链Monte Carlo结合马尔可夫随机场优化的确定性方法

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Many vision problems have been formulated as energy minimization problems and there have been significant advances in energy minimization algorithms. The most widely-used energy minimization algorithms include Graph Cuts, Belief Propagation and Tree-Reweighted Message Passing. Although they have obtained good results, they are still unsatisfactory when it comes to more difficult MRF problems such as non-submodular energy functions, highly connected MRFs, and high-order clique potentials. There have also been other approaches, known as stochastic sampling-based algorithms, which include Simulated Annealing, Markov Chain Monte Carlo and Population-based Markov Chain Monte Carlo. They are applicable to any general energy models but they are usually slower than deterministic methods. In this paper, we propose new algorithms which elegantly combine stochastic and deterministic methods. Sampling-based methods are boosted by deterministic methods so that they can rapidly move to lower energy states and easily jump over energy barriers. In different point of view, the sampling-based method prevents deterministic methods from getting stuck at local minima. Consequently, a combination of both approaches substantially increases the quality of the solutions. We present a thorough analysis of the proposed methods in synthetic MRF problems by controlling the hardness of the problems. We also demonstrate experimental results for the photomontage problem which is the most difficult one among the standard MRF benchmark problems.
机译:许多视力问题已被制定为能量最小化问题,并且在能量最小化算法中存在显着进展。最广泛使用的能量最小化算法包括图形切割,信仰传播和树重复消息传递。虽然它们获得了良好的结果,但在更加困难的MRF问题,如非亚底岩能量功能,高度连接的MRF和高阶固定潜力方面,它们仍然不令人满意。还有其他方法,称为随机采样的算法,包括模拟退火,马尔可夫链蒙特卡罗和基于人口的马尔可夫链蒙特卡罗。它们适用于任何一般能源模型,但它们通常比确定方法慢。在本文中,我们提出了新的算法,优雅地结合了随机和确定性方法。基于采样的方法是通过确定方法提升的,因此它们可以迅速移动到更低的能量状态,并且容易跳过能量屏障。在不同的观点中,基于采样的方法可以防止确定性方法在局部最小值时陷入困境。因此,两种方法的组合显着增加了解决方案的质量。通过控制问题的硬度,我们对合成MRF问题的提出方法进行了彻底的分析。我们还证明了光源问题的实验结果,这是标准MRF基准问题中最困难的问题。

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