Deep Video Deblurring for Hand-Held Cameras

Shuochen Su, M. Delbracio, Jue Wang, G. Sapiro, W. Heidrich, Oliver Wang
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引用次数: 445

Abstract

Motion blur from camera shake is a major problem in videos captured by hand-held devices. Unlike single-image deblurring, video-based approaches can take advantage of the abundant information that exists across neighboring frames. As a result the best performing methods rely on the alignment of nearby frames. However, aligning images is a computationally expensive and fragile procedure, and methods that aggregate information must therefore be able to identify which regions have been accurately aligned and which have not, a task that requires high level scene understanding. In this work, we introduce a deep learning solution to video deblurring, where a CNN is trained end-to-end to learn how to accumulate information across frames. To train this network, we collected a dataset of real videos recorded with a high frame rate camera, which we use to generate synthetic motion blur for supervision. We show that the features learned from this dataset extend to deblurring motion blur that arises due to camera shake in a wide range of videos, and compare the quality of results to a number of other baselines.
手持相机的深度视频去模糊
相机抖动引起的运动模糊是手持设备拍摄视频的主要问题。与单图像去模糊不同,基于视频的方法可以利用存在于相邻帧之间的丰富信息。因此,最好的方法依赖于附近帧的对齐。然而,对齐图像是一个计算昂贵且脆弱的过程,因此聚合信息的方法必须能够识别哪些区域已经准确对齐,哪些没有,这是一项需要高水平场景理解的任务。在这项工作中,我们为视频去模糊引入了一种深度学习解决方案,其中对CNN进行端到端训练,以学习如何跨帧积累信息。为了训练这个网络,我们收集了一个用高帧率摄像机录制的真实视频数据集,我们用它来生成合成运动模糊以进行监督。我们展示了从这个数据集中学习到的特征扩展到去模糊运动模糊,这是由于在大范围的视频中相机抖动而产生的,并将结果的质量与许多其他基线进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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