IEEE Trans Image Process. 2014 Aug;23(8):3281-93. doi: 10.1109/TIP.2014.2328893.
In this paper, an original observation model for multiresolution optical flow estimation is introduced. Multiresolution frameworks, often based on coarse-to-fine warping strategies, are widely used by state-of-the-art optical flow methods. They allow the recovery of large motions by successive estimations of the flow field at several resolution levels. Although such approaches perform very efficiently and usually lead to faster minimizations, they generally consider independent problems at each resolution levels and do not exploit the existing interactions between scales (especially the influences of fine scales on larger ones). In this paper, we tackle this issue by proposing a flexible framework, inspired from fluid mechanics, able to partly counter these limitations. For each resolution level, our process filters the equations of interest and decomposes the key variables into resolved (i.e., at a given resolution) and unresolved (i.e., at finer resolutions) components. This enables to derive a new data term that takes into account, at coarse resolutions, the influence of their unresolved parts. From this new term, we propose two different estimation strategies, depending on whether we explicitly know the type of relations between the different scales (as for physical processes) or not. In order to test the efficiency of this new observation model, we have embedded it in a simple multiresolution Lucas-Kanade estimator. Comparing the usual optical flow constraint equation with this new term in the same motion estimation procedure, it clearly appears that the proposed term leads to more consistent estimates and prevents from errors propagation apparition during the estimation. In all situations (synthetic, real, physical images or not), our new term is able to greatly improve the results compared with usual conservation constraints.
本文提出了一种用于多分辨率光流估计的原始观测模型。多分辨率框架通常基于粗到精的变形策略,被最先进的光流方法广泛采用。它们允许通过在几个分辨率级别上连续估计流场来恢复大运动。虽然这种方法效率非常高,通常导致更快的最小化,但它们通常在每个分辨率级别上考虑独立的问题,并且不利用尺度之间的现有交互作用(特别是精细尺度对较大尺度的影响)。在本文中,我们通过提出一个受流体力学启发的灵活框架来解决这个问题,该框架能够部分克服这些限制。对于每个分辨率级别,我们的过程过滤感兴趣的方程,并将关键变量分解为已解决(即在给定分辨率下)和未解决(即在更精细的分辨率下)的分量。这使得能够推导出一个新的数据项,该数据项在粗分辨率下考虑其未解决部分的影响。从这个新的项中,我们提出了两种不同的估计策略,这取决于我们是否明确知道不同尺度之间的关系类型(如物理过程)或不知道。为了测试这种新观测模型的效率,我们已经将其嵌入到一个简单的多分辨率 Lucas-Kanade 估计器中。在相同的运动估计过程中,将通常的光流约束方程与这个新项进行比较,可以清楚地看出,所提出的项导致了更一致的估计,并防止了在估计过程中出现误差传播。在所有情况下(合成、真实、物理图像或非物理图像),与通常的守恒约束相比,我们的新项都能够大大改善结果。