变式学习话头语义编码传输系统

Weijie Yue, Zhongwei Si
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摘要

视频传输需要相当大的带宽,而目前广泛采用的方案在面对突出的场景时显得力不从心。受话头生成技术突飞猛进的推动,本文介绍了一种为话头视频量身定制的语义传输系统。该系统能从话头视频中捕捉语义信息,并在接收端忠实地重建源视频,整个传输过程中只需要一个参考帧和紧凑的语义特征。具体来说,我们逐帧分析像素域中的视频语义,并联合处理多帧语义信息,以无缝整合空间和时间信息。利用变异建模来评估各组语义的重要性差异,从而指导语义的带宽资源分配,提高系统效率。整个端到端系统被建模为一个优化问题,相当于获得最佳速率-失真性能。我们在参考帧和视频传输中对系统进行了评估,实验结果表明我们的系统可以提高通信效率和鲁棒性。与传统方法相比,当用户感知接近时,我们的系统可以节省 90% 以上的带宽。
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Variational learned talking-head semantic coded transmission system
Video transmission requires considerable bandwidth, and current widely employed schemes prove inadequate when confronted with scenes featuring prominently. Motivated by the strides in talking-head generative technology, the paper introduces a semantic transmission system tailored for talking-head videos. The system captures semantic information from talking-head video and faithfully reconstructs source video at the receiver, only one-shot reference frame and compact semantic features are required for the entire transmission. Specifically, we analyze video semantics in the pixel domain frame-by-frame and jointly process multi-frame semantic information to seamlessly incorporate spatial and temporal information. Variational modeling is utilized to evaluate the diversity of importance among group semantics, thereby guiding bandwidth resource allocation for semantics to enhance system efficiency. The whole end-to-end system is modeled as an optimization problem and equivalent to acquiring optimal rate-distortion performance. We evaluate our system on both reference frame and video transmission, experimental results demonstrate that our system can improve the efficiency and robustness of communications. Compared to the classical approaches, our system can save over 90% of bandwidth when user perception is close.
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