CVMar 20, 2022

Optical Flow for Video Super-Resolution: A Survey

arXiv:2203.10462v122 citationsh-index: 41
Originality Synthesis-oriented
AI Analysis

It synthesizes existing knowledge for researchers in computer vision, but is incremental as it reviews rather than advances the field.

This paper provides a comprehensive survey on the role of optical flow in video super-resolution, analyzing its use for motion compensation and temporal alignment in deep learning methods, but does not present new experimental results or numerical improvements.

Video super-resolution is currently one of the most active research topics in computer vision as it plays an important role in many visual applications. Generally, video super-resolution contains a significant component, i.e., motion compensation, which is used to estimate the displacement between successive video frames for temporal alignment. Optical flow, which can supply dense and sub-pixel motion between consecutive frames, is among the most common ways for this task. To obtain a good understanding of the effect that optical flow acts in video super-resolution, in this work, we conduct a comprehensive review on this subject for the first time. This investigation covers the following major topics: the function of super-resolution (i.e., why we require super-resolution); the concept of video super-resolution (i.e., what is video super-resolution); the description of evaluation metrics (i.e., how (video) superresolution performs); the introduction of optical flow based video super-resolution; the investigation of using optical flow to capture temporal dependency for video super-resolution. Prominently, we give an in-depth study of the deep learning based video super-resolution method, where some representative algorithms are analyzed and compared. Additionally, we highlight some promising research directions and open issues that should be further addressed.

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