Generalized Compressed Video Restoration by Multi-Scale Temporal Fusion and Hierarchical Quality Score Estimation

Zhijie Huang, Tianyi Sun, Xiaopeng Guo, Yanze Wang, Jun Sun
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Abstract

Learning-based methods have achieved excellent performance for compressed video restoration (CVR) in recent years. However, existing networks aggregate multi-frame information inefficiently and are usually developed for specific quantization parameters (QPs), which are not convenient for practical usage. Moreover, current works only consider compressed video restoration in Constant QP (CQP) setting, but do not discuss the performance of the model in more realistic scenarios, e.g., Constant Rate Factor (CRF) and Constant Bitrate (CBR). In this paper, we propose a generalized quality-aware compressed video restoration network, namely QCRN. Specifically, to achieve multi-frame aggregation efficiently, we propose a multi-scale deformable temporal fusion. Meanwhile, QCRN decouples the global quality and local quality representations from input via the hierarchical quality score estimator, and then employs them to adjust the feature enhancement. Extensive experiments on compressed videos in various settings demonstrate that our proposed QCRN achieves favorable performance against state-of-the-art methods in terms of both quantitative metrics and visual quality.
基于多尺度时间融合和分层质量评分估计的广义压缩视频恢复
近年来,基于学习的压缩视频复原方法取得了优异的效果。然而,现有的网络聚合多帧信息的效率不高,而且通常是针对特定的量化参数(QPs)开发的,不便于实际应用。此外,目前的工作只考虑了恒定QP (CQP)设置下的压缩视频恢复,而没有讨论模型在更现实的场景下的性能,例如恒定速率因子(CRF)和恒定比特率(CBR)。本文提出了一种广义的质量感知压缩视频恢复网络,即QCRN。具体来说,为了有效地实现多帧聚合,我们提出了一种多尺度可变形时间融合算法。同时,QCRN通过分层质量分数估计器将输入的全局质量表示和局部质量表示解耦,然后利用它们来调整特征增强。在各种环境下对压缩视频进行的大量实验表明,我们提出的QCRN在定量指标和视觉质量方面都比最先进的方法取得了良好的性能。
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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