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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Drift robust non-rigid optical flow enhancement for long sequences
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Drift robust non-rigid optical flow enhancement for long sequences

机译:漂移鲁棒的非刚性光流增强,可实现长序列

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摘要

It is hard to densely track a nonrigid object in long term, which is a fundamental research issue in the computer vision community. This task often relies on estimating pairwise correspondences between images over time where the error is accumulated and leads to a drift. In this paper, we introduce a novel optimisation framework with an Anchor Patch constraint. It is supposed to significantly reduce overall errors given long sequences containing nonrigidly deformable objects. Our framework can be applied to any dense tracking algorithm, e.g. optical flow. We demonstrate the success of our approach by showing significant error reduction on 6 popular optical flow algorithms applied to a range of realworld nonrigid benchmarks. We also provide quantitative analysis of our approach given synthetic occlusions and image noise.
机译:长期难以密集地跟踪非刚性对象,这是计算机视觉界的基础研究问题。该任务通常依赖于估计图像之间随时间的成对对应关系,其中误差会累积并导致漂移。在本文中,我们介绍了一个具有Anchor Patch约束的新颖的优化框架。考虑到包含不可变形物体的长序列,它可以显着减少总体误差。我们的框架可以应用于任何密集跟踪算法,例如光流。我们通过将6种流行的光流算法应用于一系列现实世界的非刚性基准上,显着降低了误差,证明了我们方法的成功。考虑到合成遮挡和图像噪声,我们还提供了对我们方法的定量分析。

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