Advanced Binary Neural Network for Single Image Super Resolution

被引:0
作者
Jingwei Xin
Nannan Wang
Xinrui Jiang
Jie Li
Xinbo Gao
机构
[1] Xidian University,State Key Laboratory of Integrated Services Networks, School of Telecommunications Engineering
[2] Xidian University,State Key Laboratory of Integrated Services Networks, School of Electronic Engineering
[3] Chongqing University of Posts and Telecommunications,Chongqing Key Laboratory of Image Cognition
来源
International Journal of Computer Vision | 2023年 / 131卷
关键词
Image super resolution; Model binarization; Computational consumption; Inference mechanism; Up-sampling operation;
D O I
暂无
中图分类号
学科分类号
摘要
Binary neural network (BNN) is an effective approach to accelerate the model inference and has been initially applied in the field of single image super resolution (SISR). However, the optimization of efficiency and accuracy remains a major challenge for achieving further improvements. While existing BNN-based SR methods solve the SISR problems by proposing a residual block-oriented quantization mechanism, the quantization process in the up-sampling stage and the representation tendency of binary super resolution networks are ignored. In this paper, we propose an Advanced Binary Super Resolution (ABSR) method to optimize the binary generator in terms of quantization mechanism and up-sampling strategy. Specifically, we first design an excitation-selection mechanism for binary inference, which could distinctively implement self-adjustment of activation and significantly reduce inference errors. Furthermore, we construct a binary up-sampling strategy that achieves performance almost equal to that of real-valued up-sampling modules, and fully frees up the inference speed of the binary network. Extensive experiments show that the ABSR not only reaches state-of-the-art BNN-based SR performance in terms of objective metrics and visual quality, but also reduces computational consumption drastically.
引用
收藏
页码:1808 / 1824
页数:16
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