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Generative Adversarial Network-Based Intra Prediction for Video Coding

机译:基于生成对抗网络的视频编码帧内预测

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摘要

In this paper, a novel intra prediction method is proposed to improve the video coding performance, in which the generative adversarial network (GAN) is adopted to intelligently remove the spatial redundancy with the inference process. The proposed GAN-based method improves the prediction by exploiting more information and generating more flexible prediction patterns. In particular, the intra prediction is modeled as an inpainting task, which is accomplished with the GAN model to fill in the missing part by conditioning on the available reconstructed pixels. As such, the learned GAN model is incorporated into both video encoder and decoder, and the rate-distortion optimization is performed for the competition between GAN-based intra prediction and traditional angular-based intra prediction to achieve better coding performance. The proposed scheme is implemented into the high-efficiency video coding test model (HM 16.17) and the versatile video coding test model (VTM 1.1). The experimental results show that the proposed algorithm can achieve 6.6%, 7.5%, and 7.5% under HM 16.17 and 6.75%, 7.63%, and 7.65% under VTM 1.1 bit rate savings on average for luma and chroma components in the intra coding scenario.
机译:本文提出了一种新的帧内预测方法来提高视频编码性能,其中采用生成对抗网络(GAN)来智能地去除推理过程中的空间冗余。所提出的基于GAN的方法通过利用更多信息并生成更灵活的预测模式来改善预测。特别地,将帧内预测建模为修复任务,该任务通过GAN模型完成,以通过对可用的重构像素进行条件填充来填充缺失部分。这样,将学习的GAN模型结合到视频编码器和解码器两者中,并且为了在基于GAN的帧内预测与传统的基于角度的帧内预测之间的竞争中执行速率失真优化,以实现更好的编码性能。所提出的方案已实施到高效视频编码测试模型(HM 16.17)和通用视频编码测试模型(VTM 1.1)中。实验结果表明,该算法在帧内编码场景下,亮度和色度分量平均在HM 16.17,HM 16.17以及6.6%,7.63%和7.65%的VTM 1.1比特率下可分别节省6.6%,7.5%和7.5%。 。

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