Video Enhancement Network Based on Max-Pooling and Hierarchical Feature Fusion

2021 Data Compression Conference (DCC)(2021)

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摘要
In this paper, we propose an efficient convolution neural network to enhance the quality of video compressed by HEVC standard. The model is composed of a max-pooling module and a hierarchical feature fusion module. The max-pooling module extracts feature from different scales and enlarges the receptive field of the model without stacking too many convolution layers. And the hierarchical feature fu...
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关键词
Adaptation models,Visualization,Convolution,Fuses,Stacking,Neural networks,Data compression
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