Recent advancements in deep learning techniques have significantly improved the quality of compressed videos. However, previous approaches have not fully exploited the motion characteristics of compressed videos, such as the drastic change in motion between video contents and the hierarchical coding structure of the compressed video. This study proposes a novel framework that leverages the low-delay configuration of video compression to enhance the existing state-of-the-art method, BasicVSR++. We incorporate a context-adaptive video fusion method to enhance the final quality of compressed videos. The proposed approach has been evaluated in the NTIRE22 challenge, a benchmark for video restoration and enhancement, and achieved improvements in both quantitative metrics and visual quality compared to the previous method.
翻译:最近深层学习技术的进步大大提高了压缩视频的质量,然而,以往的做法并未充分利用压缩视频的动作特征,如视频内容与压缩视频的等级编码结构发生急剧变化,本研究报告提出了一个新的框架,利用视频压缩的低延迟配置,加强现有的最新技术方法,即BasicVSR+++。我们采用了适合背景的视频聚合方法,以提高压缩视频的最终质量。在NTIRE22挑战(视频恢复和升级的基准)中,对拟议方法进行了评估,并实现了与以往方法相比的定量指标和视觉质量的改进。</s>