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On robust optical flow estimation on image sequences with differently exposed frames using primal-dual optimization

机译:基于原始对偶优化的具有不同曝光帧的图像序列的鲁棒光流估计

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摘要

Optical flow methods are used to estimate pixelwise motion information based on consecutive frames in image sequences. The image sequences traditionally contain frames that are similarly exposed. However, many real-world scenes contain high dynamic range content that cannot be captured well with a single exposure setting. Such scenes result in certain image regions being over- or underexposed, which can negatively impact the quality of motion estimates in those regions. Motivated by this, we propose to capture high dynamic range scenes using different exposure settings every other frame. A framework for OF estimation on such image sequences is presented, that can straightforwardly integrate techniques from the state-of-the-art in conventional OF methods. Different aspects of robustness of OF methods are discussed, including estimation of large displacements and robustness to natural illumination changes that occur between the frames, and we demonstrate experimentally how to handle such challenging flow estimation scenarios. The flow estimation is formulated as an optimization problem whose solution is obtained using an efficient primal-dual method. (C) 2016 Elsevier B.V. All rights reserved.
机译:光流方法用于基于图像序列中的连续帧估计逐像素运动信息。传统上,图像序列包含类似曝光的帧。但是,许多真实世界的场景都包含高动态范围内容,而单次曝光设置无法很好地捕获这些内容。这样的场景导致某些图像区域曝光过度或曝光不足,这可能会对这些区域中的运动估计质量产生负面影响。因此,我们建议每隔一帧使用不​​同的曝光设置来捕获高动态范围场景。提出了一种用于在此类图像序列上进行OF估计的框架,该框架可以直接集成传统OF方法中最新技术的技术。讨论了OF方法的鲁棒性的不同方面,包括大位移的估计和帧之间发生的自然光照变化的鲁棒性,并且我们通过实验演示了如何处理这种具有挑战性的流量估计方案。流量估算公式化为一个优化问题,可以使用有效的原始对偶方法获得其解。 (C)2016 Elsevier B.V.保留所有权利。

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