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A DenseNet Based Approach for Multi-frame In-loop Filter in HEVC

机译:HEVC中基于DenseNet的多帧环路滤波器方法

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High efficiency video coding (HEVC) has brought outperforming efficiency for video compression. To reduce the compression artifacts of HEVC, we propose a DenseNet based approach as the in-loop filter of HEVC, which leverages multiple adjacent frames to enhance the quality of each encoded frame. Specifically, the higher-quality frames are found by a reference frame selector (RFS). Then, a deep neural network for multi-frame in-loop filter (named MIF-Net) is developed to enhance the quality of each encoded frame by utilizing the spatial information of this frame and the temporal information of its neighboring higher-quality frames. The MIF-Net is built on the recently developed DenseNet, benefiting from the improved generalization capacity and computational efficiency. Finally, experimental results verify the effectiveness of our multi-frame in-loop filter, outperforming the HM baseline and other state-of-the-art approaches.
机译:高效视频编码(HEVC)为视频压缩带来了超乎寻常的效率。为了减少HEVC的压缩伪像,我们提出了一种基于DenseNet的方法作为HEVC的环路滤波器,该方法利用多个相邻帧来提高每个编码帧的质量。具体来说,可以通过参考帧选择器(RFS)找到更高质量的帧。然后,开发了一种用于多帧环路滤波器的深度神经网络(称为MIF-Net),以利用该帧的空间信息及其相邻的更高质量帧的时间信息来提高每个编码帧的质量。 MIF-Net建立在最近开发的DenseNet上,得益于改进的泛化能力和计算效率。最后,实验结果证明了我们的多帧环路滤波器的有效性,优于HM基线和其他最新方法。

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