Early CTU Termination and Three-steps Mode Decision Method for Fast Versatile Video Coding

S. Q. Nguyen, Tien Huu Vu, Duong Trieu Dinh, Minh Bao Dinh, Minh N. Do, X. Hoang
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Abstract

Versatile Video Coding (VVC) has been recently becoming popular in coding videos due to its compression efficiency. To reach this performance, Joint Video Experts Team (JVET) has introduced a number of improvement techniques to VVC coding model. Among them, VVC Intra coding introduces a new concept of quad-tree nested multi-type tree (QTMT) and extends the predicted modes with up to 67 options. As a result, the complexity of the VVC Intra encoding also greatly increases. To make VVC Intra coding more feasible in real-time applications, we propose in this paper a novel deep learning based fast QTMT and an early mode prediction method. At the first stage, we use a learned convolutional neural network (CNN) model to predict the coding unit map and then fed into the VVC encoder to early terminate the block partitioning process. After that, we design a statistical model to predict a list of most probable modes (MPM) for each selected Coding using (CU) size. Finally, we employ a so-called three-steps mode decision algorithm to estimate the optimal directional mode without sacrificing the compression performance. The proposed early CU splitting and fast intra prediction are integrated into the latest VTM reference software. Experimental results show that the proposed method can save 50.2% of encoding time with a negligible BD-Rate increase.
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快速通用视频编码的早期CTU终止和三步模式判定方法
多功能视频编码(VVC)由于其压缩效率高,近年来在视频编码中得到了广泛的应用。为了达到这一性能,联合视频专家小组(JVET)对VVC编码模型引入了许多改进技术。其中,VVC Intra编码引入了四叉树嵌套多类型树(QTMT)的新概念,将预测模式扩展到67个选项。因此,VVC Intra编码的复杂性也大大增加。为了使VVC Intra编码在实时应用中更加可行,本文提出了一种基于深度学习的快速QTMT和早期模式预测方法。在第一阶段,我们使用学习卷积神经网络(CNN)模型预测编码单元映射,然后将其输入到VVC编码器中,以提前终止块划分过程。之后,我们设计了一个统计模型来预测每个选择的编码使用(CU)大小的最可能模式(MPM)列表。最后,我们采用所谓的三步模式决策算法来估计最优的方向模式,而不牺牲压缩性能。在最新的VTM参考软件中集成了提出的早期CU分割和快速内预测。实验结果表明,该方法可以节省50.2%的编码时间,而BD-Rate的提高可以忽略不计。
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