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Machine learning for arbitrary downsizing of pre-encoded video in HEVC

机译:机器学习可在HEVC中任意缩小预编码视频的大小

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摘要

In this paper, we propose a machine learning based transcoding scheme for arbitrarily downsizing a pre-encoded High Efficiency Video Coding video. The spatial scaling factor can be freely selected to adapt the output bit rate to the bandwidth of the network. Furthermore, machine learning techniques can exploit the correlation between input and output coding information to predict the split-flag of coding units in a P-frame. We analyzed the performance of both offline and online training in the learning phase of transcoding. The experimental results show that the proposed techniques significantly reduce the transcoding complexity and achieve trade-offs between coding performance and complexity. In addition, we demonstrate that online training performs better than offline training.
机译:在本文中,我们提出了一种基于机器学习的转码方案,用于任意精简预编码的高效视频编码视频。可以自由选择空间比例因子,以使输出比特率适应网络的带宽。此外,机器学习技术可以利用输入和输出编码信息之间的相关性来预测P帧中编码单元的分割标志。我们在转码的学习阶段分析了离线和在线培训的性能。实验结果表明,所提出的技术大大降低了代码转换的复杂度,并在编码性能和复杂度之间进行了权衡。此外,我们证明了在线培训比离线培训要好。

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