A qualitative investigation of optical flow algorithms for video denoising

Hannes Fassold
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Abstract

A good optical flow estimation is crucial in many video analysis and restoration algorithms employed in application fields like media industry, industrial inspection and automotive. In this work, we investigate how well optical flow algorithms perform qualitatively when integrated into a state of the art video denoising algorithm. Both classic optical flow algorithms (e.g. TV-L1) as well as recent deep learning based algorithm (like RAFT or BMBC) will be taken into account. For the qualitative investigation, we will employ realistic content with challenging characteristic (noisy content, large motion etc.) instead of the standard images used in most publications.
视频去噪的光流算法的定性研究
在媒体行业、工业检测和汽车等应用领域的视频分析和恢复算法中,良好的光流估计是至关重要的。在这项工作中,我们研究了当集成到最先进的视频去噪算法中时,光流算法的定性性能如何。经典的光流算法(如TV-L1)以及最近基于深度学习的算法(如RAFT或BMBC)都将被考虑在内。对于定性调查,我们将采用具有挑战性特征的现实内容(嘈杂内容,大运动等),而不是大多数出版物中使用的标准图像。
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