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首页> 外文期刊>International Journal of Distributed Sensor Networks >Quality enhancement of VVC intra-frame coding for multimedia services over the Internet
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Quality enhancement of VVC intra-frame coding for multimedia services over the Internet

机译:互联网上多媒体服务VVC内部编码的质量增强

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In this article, versatile video coding, the next-generation video coding standard, is combined with a deep convolutional neural network to achieve state-of-the-art image compression efficiency. The proposed hierarchical grouped residual dense network exhaustively exploits hierarchical features in each architectural level to maximize the image quality enhancement capability. The basic building block employed for hierarchical grouped residual dense network is residual dense block which exploits hierarchical features from internal convolutional layers. Residual dense blocks are then combined into a grouped residual dense block exploiting hierarchical features from residual dense blocks. Finally, grouped residual dense blocks are connected to comprise a hierarchical grouped residual dense block so that hierarchical features from grouped residual dense blocks can also be exploited for quality enhancement of versatile video coding intra-coded images. Various non-architectural and architectural aspects affecting the training efficiency and performance of hierarchical grouped residual dense network are explored. The proposed hierarchical grouped residual dense network respectively obtained 10.72% and 14.3% of Bj?ntegaard-delta-rate gains against versatile video coding in the experiments conducted on two public image datasets with different characteristics to verify the image compression efficiency.
机译:在本文中,多功能视频编码,下一代视频编码标准与深度卷积神经网络相结合以实现最先进的图像压缩效率。所提出的分层分组残留密集网络详尽地利用了每个架构层中的分层特征,以最大化图像质量增强能力。用于分层分组的残留致密网络的基本构建块是残留密集块,其利用内部卷积层的分层特征。然后将残留的致密块组合成来自残留致密块的分组残留块利用分层特征。最后,分组的残留致密块连接以包括分层分组的残余密集块,以便可以利用来自分组的残余密度块的分层特征来用于多功能视频编码帧内编码图像的质量增强。探讨了影响分层分组残留网络培训效率和性能的各种非架构和架构方面。所提出的分层分组残留致密网络分别获得10.72%和14.3%的BJ?NTEGAARD-DELTA速率在具有不同特征的两种公共图像数据集的实验中进行多功能视频编码,以验证图像压缩效率。

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