An Enhanced Video Super Resolution System Using Group-Based Optimized Filter-Set with Shallow Convolutional Neural Network

Sangchul Kim, J. Nang
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Abstract

Scaling up video resolution has conventionally been achieved via linear interpolation, however this method occasionally introduces blurring to the output. Super-resolution (SR), an approach to preserve image quality in enlarged still images, has been exploited as a substitute for linear interpolation, however, the output at times exhibits image qualities worse than what linear interpolation produces primarily because the initial goal of SR is preservation of image quality when a still image is enlarged. In this context, this paper proposes a fast-performance adaptive system for scaling-up other resolutions like X2 using X3 model or X3 using X2 model by (1) first grouping frames that would use similar filter sets (2) then conducting fine-tuning of shallow CNN for SR on each frame group. Filter sets fine-tuned for each group resulted in significantly improved PSNR over either linear interpolation or conventional SR in our experiment. In the fine-tuning stage for each group, 0.5K to 2.5K iterations were sufficient to improve PSNR by 10%. By fine-tuning instead of performing full training, the number of sufficient iterations was reduced from 3,000K to mere 0.5K to 2.5K.
基于分组优化滤波集的浅卷积神经网络增强视频超分辨率系统
放大视频分辨率通常是通过线性插值实现的,然而这种方法偶尔会引入输出模糊。超分辨率(SR)是一种在放大的静止图像中保持图像质量的方法,已被用作线性插值的替代品,然而,输出的图像质量有时比线性插值产生的图像质量差,主要是因为SR的初始目标是在静止图像被放大时保持图像质量。在此背景下,本文提出了一种快速性能的自适应系统,用于放大其他分辨率,如X2使用X3模型或X3使用X2模型,方法是:(1)首先将使用相似滤波器集的帧分组(2),然后对每个帧组进行浅CNN的SR微调。在我们的实验中,对每个组的滤波器集进行微调,结果显着提高了线性插值或传统SR的PSNR。在每个组的微调阶段,0.5K到2.5K的迭代足以将PSNR提高10%。通过微调而不是执行完整的训练,足够的迭代次数从3,000K减少到仅0.5K到2.5K。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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