Key frame-based video super-resolution using bi-directional overlapped block motion compensation and trained dictionary

B. Song, Shin-Cheol Jeong, Yanglim Choi
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引用次数: 6

Abstract

This paper presents a video super-resolution algorithm to interpolate an arbitrary frame in a low resolution video sequence from sparsely existing high resolution key pictures. Firstly, hierarchical motion estimation is performed between the input and the key low resolution frames on a patch basis. If motion-compensated error is small, an input LR patch is super-resolved by bi-directional overlapped block motion compensation. Otherwise, the input patch is spatially super-resolved using the dictionary which is learned from the key low resolution and its corresponding high resolution pictures beforehand. Finally, possible blocking artifacts between a motion-compensated patch and a spatially super-resolved patch are concealed using a specific de-blocking process. Experimental results show that the proposed algorithm provides significantly better subjective visual quality as well as objective quality than previous interpolation algorithms.
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基于双向重叠块运动补偿和训练字典的关键帧视频超分辨率
本文提出了一种视频超分辨率算法,用于从稀疏存在的高分辨率关键图像中插值到低分辨率视频序列中的任意帧。首先,在输入帧和关键低分辨率帧之间以patch为基础进行分层运动估计;在运动补偿误差较小的情况下,通过双向重叠块运动补偿实现输入LR块的超分辨。否则,使用事先从关键的低分辨率图像及其对应的高分辨率图像中学习到的字典对输入patch进行空间超分辨。最后,使用特定的去阻塞过程隐藏运动补偿补丁和空间超分辨补丁之间可能的阻塞伪像。实验结果表明,该算法的主观视觉质量和客观视觉质量都明显优于以往的插值算法。
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