2021 Data Compression Conference (DCC) | 2021

Reducing Image Compression Artifacts for Deep Neural Networks

 
 
 
 
 

Abstract


Existing compression artifacts reduction methods aim to restore images on pixel-level, which can improve the human visual experience. However, in many applications, large-scale images are collected not for visual examination by humans. Instead, they are used for many high-level vision tasks usually by Deep Neural Networks (DNN). In this paper, we find that these methods have limited performance improvements to high-level tasks, even bring negative effects. Therefore, inspired by the teacher-student network framework, we propose a compression artifacts reduction framework (ARF) for DNN. In addition, we generalize our method to the unsupervised setting (U-ARF) where the corresponding original images are unavailable in training. Extensive experiments indicate the proposed methods can help DNNs improve performance on the highly compressed images significantly.

Volume None
Pages 355-355
DOI 10.1109/DCC50243.2021.00044
Language English
Journal 2021 Data Compression Conference (DCC)

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