SPM-BP:连续mrf的加速补丁匹配信念传播

Yu Li, Dongbo Min, M. S. Brown, M. Do, Jiangbo Lu
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引用次数: 87

摘要

马尔可夫随机场被广泛地用于模拟许多计算机视觉问题,这些问题可以在由一元势和两两势组成的能量最小化框架中进行建模。虽然计算上易于处理的离散优化器,如图切割和信念传播(BP)存在于多标签离散问题中,但当标签驻留在巨大或非常密集的采样空间中时,它们仍然面临着过高的计算挑战。结合PatchMatch的有效粒子传播和重采样的关键思想,PatchMatch信念传播(PMBP)在解决连续标记问题方面具有良好的性能,运行速度比粒子BP (PBP)快几个数量级。然而,PMBP解决方案的质量与本地窗口大小紧密耦合,在此基础上聚合原始数据成本以减轻数据约束中的模糊性。这种依赖关系严重影响整体复杂性,并随着窗口大小线性增加。本文提出了一种新的加速PMBP (SPM-BP)算法来解决这一关键的计算瓶颈,并将PMBP的速度提高了50-100倍。SPM-BP算法的关键在于将基于滤波器的成本聚合和消息传递与基于patchmatch的粒子生成高效地统一起来。虽然其公式简单,但与更复杂和特定任务的方法相比,SPM-BP在基准数据集上实现了亚像素精确立体和光流的卓越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SPM-BP: Sped-Up PatchMatch Belief Propagation for Continuous MRFs
Markov random fields are widely used to model many computer vision problems that can be cast in an energy minimization framework composed of unary and pairwise potentials. While computationally tractable discrete optimizers such as Graph Cuts and belief propagation (BP) exist for multi-label discrete problems, they still face prohibitively high computational challenges when the labels reside in a huge or very densely sampled space. Integrating key ideas from PatchMatch of effective particle propagation and resampling, PatchMatch belief propagation (PMBP) has been demonstrated to have good performance in addressing continuous labeling problems and runs orders of magnitude faster than Particle BP (PBP). However, the quality of the PMBP solution is tightly coupled with the local window size, over which the raw data cost is aggregated to mitigate ambiguity in the data constraint. This dependency heavily influences the overall complexity, increasing linearly with the window size. This paper proposes a novel algorithm called sped-up PMBP (SPM-BP) to tackle this critical computational bottleneck and speeds up PMBP by 50-100 times. The crux of SPM-BP is on unifying efficient filter-based cost aggregation and message passing with PatchMatch-based particle generation in a highly effective way. Though simple in its formulation, SPM-BP achieves superior performance for sub-pixel accurate stereo and optical-flow on benchmark datasets when compared with more complex and task-specific approaches.
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