学习视频稳定使用光流

Ji-yang Yu, R. Ramamoorthi
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引用次数: 46

摘要

我们提出了一种新的神经网络,从输入视频的光流场中推断出用于视频稳定的逐像素扭曲场。先前基于学习的视频稳定方法试图从彩色视频中隐式学习帧运动,而我们的方法采用光流进行运动分析,并使用光流直接学习稳定。我们还提出了一种使用光流主成分进行运动涂漆和翘曲场平滑的管道,使我们的方法对运动物体,遮挡和光流不准确具有鲁棒性,这是其他视频稳定方法所面临的挑战。我们的方法比基于最先进的优化和基于深度学习的视频稳定方法在定量和视觉上取得了更好的结果。与基于优化的方法相比,我们的方法的速度提高了约3倍。
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Learning Video Stabilization Using Optical Flow
We propose a novel neural network that infers the per-pixel warp fields for video stabilization from the optical flow fields of the input video. While previous learning based video stabilization methods attempt to implicitly learn frame motions from color videos, our method resorts to optical flow for motion analysis and directly learns the stabilization using the optical flow. We also propose a pipeline that uses optical flow principal components for motion inpainting and warp field smoothing, making our method robust to moving objects, occlusion and optical flow inaccuracy, which is challenging for other video stabilization methods. Our method achieves quantitatively and visually better results than the state-of-the-art optimization based and deep learning based video stabilization methods. Our method also gives a ~3x speed improvement compared to the optimization based methods.
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