4.6 Article

Optical flow for video super-resolution: a survey

Journal

ARTIFICIAL INTELLIGENCE REVIEW
Volume 55, Issue 8, Pages 6505-6546

Publisher

SPRINGER
DOI: 10.1007/s10462-022-10159-8

Keywords

Video super-resolution; Optical flow; Optical Flow-based video super-resolution; Temporal dependency

Funding

  1. National Natural Science Foundation of China [62106177]
  2. Central University Basic Research Fund of China [2042020KF0016, CCNU20TS028]
  3. Teaching research project of CCNU [202013]
  4. supercomputing system in the Super-computing Center of Wuhan University
  5. Wuhan University-Infinova project [2019010019]

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Video super-resolution is an active research topic in computer vision, aiming to improve the resolution of videos using techniques like optical flow for motion compensation. This comprehensive review explores the role of optical flow in video super-resolution and highlights the use of deep learning methods in this field.
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) super-resolution 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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