基于插值参考帧的层次编码结构深度编码

Yu Guo, Zizheng Liu, Zhenzhong Chen, Shan Liu
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引用次数: 3

摘要

在混合视频编码框架中,相互预测是利用时间冗余的有效工具。由于相互预测的性能取决于参考帧的内容,因此使用更多有效的参考帧可以显著提高编码效率。本文提出了一种利用深度神经网络生成人工参考帧的增强互编码方案。具体来说,从之前重构的双边帧中插值出一个新的参考帧,这可以看作是对待编码帧的预测。将合成的帧合并到参考图像列表中进行运动估计,进一步减小预测残差。我们将该方法集成到HM-16.20随机接入配置中。实验结果表明,该方法可以显著提高编码性能,与HEVC基线相比,平均降低了4.6%的bd率。
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Deep Inter Coding with Interpolated Reference Frame for Hierarchical Coding Structure
In the hybrid video coding framework, inter prediction is an efficient tool to exploit temporal redundancy. Since the performance of inter prediction depends on the content of reference frames, coding efficiency can be significantly improved by having more effective reference frames. In this paper, we propose an enhanced inter coding scheme by generating artificial reference frames with deep neural network. Specifically, a new reference frame is interpolated from two-sided previously reconstructed frames, which can be regarded as the prediction of the to-be-coded frame. The synthesized frame is merged into reference picture list for motion estimation to further decrease the prediction residual. We integrate the proposed method into HM-16.20 under random access configuration. Experimental results show that the proposed method can significantly boost the coding performance, which provides 4.6% BD-rate reduction on average compared to HEVC baseline.
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