Fast Estimation of Large Displacement Optical Flow Using Dominant Motion Patterns & Sub-Volume PatchMatch Filtering

M. Helala, F. Qureshi
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引用次数: 1

Abstract

This paper presents a new method for efficiently computing large-displacement optical flow. The method uses dominant motion patterns to identify a sparse set of sub-volumes within the cost volume and restricts subsequent Edge-Aware Filtering (EAF) to these sub-volumes. The method uses an extension of PatchMatch to filter these sub-volumes. The fact that our method only applies EAF to a small fraction of the entire cost volume boosts runtime performance. We also show that computational complexity is linear in the size of the images and does not depend upon the size of the label space. We evaluate the proposed technique on MPI Sintel, Middlebury and KITTI benchmarks and show that our method achieves accuracy comparable to those of several recent state-of-the-art methods, while posting significantly faster runtimes.
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基于优势运动模式和亚体积补丁匹配滤波的大位移光流快速估计
本文提出了一种有效计算大位移光流的新方法。该方法利用优势运动模式识别成本体积内的稀疏子体积集,并将后续边缘感知滤波(EAF)限制在这些子体积上。该方法使用PatchMatch的扩展来过滤这些子卷。我们的方法只将EAF应用于整个成本量的一小部分,这一事实提高了运行时性能。我们还表明,计算复杂度在图像的大小上是线性的,并且不依赖于标签空间的大小。我们在MPI sinintel、Middlebury和KITTI基准测试中评估了所提出的技术,并表明我们的方法达到了与最近几种最先进方法相当的准确性,同时运行时间明显更快。
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