交替曝光流估计运动场和遮挡时间

A. Sellent, M. Eisemann, M. Magnor
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引用次数: 9

摘要

本文提出了一种基于光流的运动估计的扩展,使用交替的短曝光和长曝光图像。传统的光流算法只依赖于连续的短曝光图像,而长曝光图像则以运动模糊的形式直接捕捉运动。这些额外的信息可以用来实现更鲁棒和准确的运动场估计以及提取遮挡力矩。我们介绍了一种图像形成模型,该模型将长时间曝光的图像与其之前和之后的短时间曝光图像联系起来,涉及密集的2D运动和逐像素遮挡/去遮挡时间。基于这种图像形成模型,我们描述了一种实用的算法来估计运动场,不仅对完全可见的图像区域,而且对被遮挡的像素。对于这些像素,交替曝光流(AEF)也决定了遮挡的时刻。我们描述了AEF在帧插值中的应用,以证明额外的长曝光信息的优势
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Motion field and occlusion time estimation via alternate exposure flow
This paper presents an extension to optical flow-based motion estimation using alternating short- and long-exposed images. While traditional optical flow algorithms rely on consecutive short-exposed images only, long-exposed images capture motion directly in the form of motion blur. This additional information can be used to achieve more robust and accurate motion field estimation as well as to extract the moment of occlusion. We introduce an image formation model that relates the long-exposed image to its preceding and succeeding short-exposed images in terms of dense 2D motion and per-pixel occlusion/disocclusion timings. Based on this image formation model, we describe a practical algorithm to estimate the motion field not only for completely visible image regions but also for pixels becoming occluded. For these pixels the Alternate Exposure Flow (AEF) also determines the moment of occlusion. We describe the application of AEF in frame interpolation to demonstrate the advantage of the additional long exposure information
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