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A Novel Deep Learning-Based Method of Improving Coding Efficiency from the Decoder-End for HEVC

机译:一种基于深度学习的新型方法,从HEVC的解码器端提高编码效率

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Improving the coding efficiency is the eternal theme in video coding field. The traditional way for this purpose is to reduce the redundancies inside videos by adding numerous coding options at the encoder side. However, no matter what we have done, it is still hard to guarantee the optimal coding efficiency. On the other hand, the decoded video can be treated as a certain compressive sampling of the original video. According to the compressive sensing theory, it might be possible to further enhance the quality of the decoded video by some restoration methods. Different from the traditional methods, without changing the encoding algorithm, this paper focuses on an approach to improve the video's quality at the decoder end, which equals to further boosting the coding efficiency. Furthermore, we propose a very deep convolutional neural network to automatically remove the artifacts and enhance the details of HEVC-compressed videos, by utilizing that underused information left in the bit-streams and external images. Benefit from the prowess and efficiency of the fully end-to-end feed forward architecture, our approach can be treated as a better decoder to efficiently obtain the decoded frames with higher quality. Extensive experiments indicate our approach can further improve the coding efficiency post the deblocking and SAO in current HEVC decoder, averagely 5.0%, 6.4%, 5.3%, 5.5% BD-rate reduction for all intra, lowdelay P, lowdelay B and random access configurations respectively. This method can aslo be extended to any video coding standards.
机译:提高编码效率是视频编码领域的永恒主题。用于此目的的传统方式是通过在编码器端添加大量编码选项来减少视频内部的冗余。但是,无论我们做了什么,仍然很难保证最佳的编码效率。另一方面,可以将解码后的视频视为原始视频的某个压缩采样。根据压缩感测理论,通过某些恢复方法可能会进一步提高解码视频的质量。与传统方法不同,本文不改变编码算法,而是着重于提高解码器端视频质量的方法,即进一步提高编码效率。此外,我们提出了一个非常深的卷积神经网络,通过利用比特流和外部图像中剩余的未充分利用的信息,自动去除伪像并增强HEVC压缩视频的细节。受益于完整的端到端前馈架构的能力和效率,我们的方法可以被视为更好的解码器,可以有效地获得更高质量的解码帧。大量实验表明,我们的方法可以进一步提高当前HEVC解码器的解块和SAO后的编码效率,对于所有帧内,低延迟P,低延迟B和随机访问配置,BD速率平均降低5.0%,6.4%,5.3%,5.5%分别。该方法还可以扩展到任何视频编码标准。

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