图像超分辨率自适应信息密度网络的动态权重

Chengcheng Wang, Yanpeng Cao, Feng Yu, Yongming Tang
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引用次数: 1

摘要

提出了一种基于图像信息密度特征的网络结构调整模型算法。将图像密集区域分类反馈给后续网络。根据分类信息,将图像采样窗口发送到不同的网络,实现像素级的信道切换,从而减少网络部署过程的计算压力。动态加权网络通过调整采样窗口中像素的权重系数来近似图像的形状,产生比FSRCNN更好的纹理效果。当使用公开测试集评估自适应信息密度网络结构时,SRCNN和FSRCNN的计算复杂度降低了约28%,PSNR仅降低了约0.1dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Weight of Adaptive Information Density Network for Image Super-Resolution
A model algorithm based on image information density characteristics is proposed to achieve network structure adjustment. The image dense region classification is fed back to the subsequent network. According to the classification information, the image sampling window is sent to different network to realize pixel-level channel switching, thereby reducing the network deployment process's computational pressure. The dynamic weighting network adjusts the weight coefficients of pixels in the sampling window to approximate the image's shape and generate better texture effects than FSRCNN. When using the public test sets to evaluate the adaptive information density network structure, the computation complexity of SRCNN and FSRCNN was reduced by about 28%, and the PSNR only reduced by about 0.1dB.
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