Scaling and lossy coding are widely used in video transmission and storage. Previous methods for enhancing the resolution of such videos often ignore the inherent interference between resolution loss and compression artifacts, which compromises perceptual video quality. To address this problem, we present a mixed-resolution coding framework, which cooperates with a reference-based DCNN. In this novel coding chain, the reference-based DCNN learns the direct mapping from low-resolution (LR) compressed video to their high-resolution (HR) clean version at the decoder side. We further improve reconstruction quality by devising an efficient deformable alignment module with receptive field block to handle various motion distances and introducing a disentangled loss that helps networks distinguish the artifact patterns from texture. Extensive experiments demonstrate the effectiveness of proposed innovations by comparing with state-of-the-art single image, video and reference-based restoration methods.
翻译:缩放和丢失编码在视频传输和存储中广泛使用。 先前的提高这些视频分辨率的方法往往忽视分辨率损失和压缩制品之间的固有干扰,这损害了视频的感知质量。 为了解决这一问题,我们提出了一个混合分辨率编码框架,与基于参考的DCNN合作。在这个新型编码链中,基于参考的DCNN学习了从低分辨率(LR)压缩视频到在解码器一侧高分辨率(HR)清洁版本的直接绘图。我们通过设计一个有效的可变化调整模块,用可接收的字段块处理各种运动距离,引入分解性损失,帮助网络区分文物形态和纹理。广泛的实验通过比较最先进的单一图像、视频和基于参考的恢复方法,展示了拟议创新的有效性。