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Video super-resolution based on automatic key-frame selection and feature-guided variational optical flow

机译:基于自动关键帧选择和功能导向的可变光流的视频超分辨率

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摘要

This paper proposes a new video super-resolution method based on feature-guided variational optical flow. The key-frames are automatically selected and super-resolved using a method based on sparse regression. To overcome the blocking artifacts and deal with the case of small structures with large displacement, an efficient method based on feature-guided variational optical flow is used to super-resolve the non-key-frames. Experimental results show that the proposed method outperforms the existing bench-mark in terms of both subjective visual quality and objective peak signal-to-noise ratio (PSNR). The average PSNR improvement from the bi-cubic interpolation is 7.15 dB for four datasets. Thanks to the flexibility of designed automatic key-frame selection and the validness of feature-guided variational optical flow, the proposed method is applicable to various practical video sequences.
机译:本文提出了一种新的基于特征导向的变分光流的视频超分辨率方法。使用基于稀疏回归的方法自动选择关键帧并对其进行超分辨。为了克服阻塞伪影并处理具有大位移的小结构的情况,使用了一种基于特征导向的可变光流的有效方法来超分辨非关键帧。实验结果表明,该方法在主观视觉质量和客观峰值信噪比(PSNR)方面均优于现有基准。对于四个数据集,双三次插值带来的平均PSNR改善为7.15 dB。由于设计的自动关键帧选择的灵活性以及特征引导的可变光流的有效性,因此该方法适用于各种实际的视频序列。

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