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On the Spatial Statistics of Optical Flow

机译:关于光流的空间统计

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摘要

We present an analysis of the spatial and temporal statistics of “natural” optical flow fields and a novel flow algorithm that exploits their spatial statistics. Training flow fields are constructed using range images of natural scenes and 3D camera motions recovered from hand-held and car-mounted video sequences. A detailed analysis of optical flow statistics in natural scenes is presented and machine learning methods are developed to learn a Markov random field model of optical flow. The prior probability of a flow field is formulated as a Field-of-Experts model that captures the spatial statistics in overlapping patches and is trained using contrastive divergence. This new optical flow prior is compared with previous robust priors and is incorporated into a recent, accurate algorithm for dense optical flow computation. Experiments with natural and synthetic sequences illustrate how the learned optical flow prior quantitatively improves flow accuracy and how it captures the rich spatial structure found in natural scene motion.
机译:我们对“自然”光流场的时空统计进行分析,并提出一种利用其空间统计的新颖流算法。训练流场使用自然场景的距离图像和从手持式和车载视频序列中恢复的3D摄像机运动来构建。提出了对自然场景中光流统计的详细分析,并开发了机器学习方法来学习光流的马尔可夫随机场模型。流场的先验概率被公式化为专家场模型,该模型捕获重叠斑块中的空间统计量,并使用对比散度进行训练。将该新的光流先验与先前的鲁棒先验进行比较,并将其合并到最新的精确算法中,以进行密集的光流计算。用自然和合成序列进行的实验说明了所学的光流如何先验地定量提高流精度,以及如何捕获自然场景运动中发现的丰富空间结构。

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