HEVC Inter Coding using Deep Recurrent Neural Networks and Artificial Reference Pictures

Felix Haub, Thorsten Laude, J. Ostermann
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引用次数: 13

Abstract

The efficiency of motion compensated prediction in modern video codecs highly depends on the available reference pictures. Occlusions and non-linear motion pose challenges for the motion compensation and often result in high bit rates for the prediction error. We propose the generation of artificial reference pictures using deep recurrent neural networks. Conceptually, a reference picture at the time instance of the currently coded picture is generated from previously reconstructed conventional reference pictures. Based on these artificial reference pictures, we propose a complete coding pipeline based on HEVC. By using the artificial reference pictures for motion compensated prediction, average BD-rate gains of 1.5% over HEVC are achieved.
基于深度递归神经网络和人工参考图片的HEVC编码
在现代视频编解码器中,运动补偿预测的效率很大程度上取决于可用的参考图像。遮挡和非线性运动对运动补偿提出了挑战,并经常导致高比特率的预测误差。我们提出使用深度递归神经网络生成人工参考图像。从概念上讲,从先前重构的常规参考图像生成当前编码图像的时间实例处的参考图像。在这些人工参考图片的基础上,我们提出了一个完整的基于HEVC的编码流水线。通过使用人工参考图像进行运动补偿预测,平均bd速率比HEVC提高1.5%。
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