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Efficiency-enhanced cost-volume filtering featuring coarse-to-fine strategy

机译:从粗到精策略提高效率的成本量过滤

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Cost-volume filtering (CVF) is one of the most widely used techniques for solving general multi-labeling problems based on a Markov random field (MRF). However it is inefficient when the label space size (i.e., the number of labels) is large. This paper presents a coarse-to-fine strategy for cost-volume filtering that efficiently and accurately addresses multi-labeling problems with a large label space size. Based on the observation that true labels at the same coordinates in images of different scales are highly correlated, we truncate unimportant labels for cost-volume filtering by leveraging the labeling output of lower scales. Experimental results show that our algorithm achieves much higher efficiency than the original CVF method while maintaining a comparable level of accuracy. Although we performed experiments that deal with only stereo matching and optical flow estimation, the proposed method can be employed in many other applications because of the applicability of CVF to general discrete pixel-labeling problems based on an MRF.
机译:成本量过滤(CVF)是基于Markov随机场(MRF)解决一般多标签问题的最广泛使用的技术之一。然而,当标签空间尺寸(即,标签数量)较大时,效率低下。本文提出了一种从粗到细的成本-容量过滤策略,该策略可以有效而准确地解决具有较大标签空间大小的多标签问题。基于观察到不同比例尺的图像中相同坐标处的真实标签高度相关的观察,我们通过利用较低比例尺的标签输出来截断不重要的标签以进行成本量过滤。实验结果表明,我们的算法在保持相当水平的准确性的同时,比原始CVF方法具有更高的效率。尽管我们进行了仅处理立体声匹配和光流估计的实验,但由于CVF适用于基于MRF的一般离散像素标记问题,因此该方法可用于许多其他应用。

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