Improved Double Regression Nonlinear Image Super Resolution Model

Jieyi Lv, Zhongsheng Wang
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Abstract

Abstract The existing super resolution reconstruction methods are mainly divided into traditional super resolution reconstruction and deep learning super resolution reconstruction. The main problem faced by traditional super resolution reconstruction algorithms, such as image enlargement and space transformation, is how to establish the mapping relationship between the input image and the target image, and express the pixel value of the target image through the mapping relationship. As a prominent problem, the difficulty of super resolution reconstruction lies in the fact that there is no realizable matrix relationship between one - to - many mapping relationships. Based on the U-Net network framework, this paper improves the jump-connected modules. By using the combination of convolutional layer, activation layer and residual channel block, the overall module operation efficiency is increased by 2.4%, the overall PNSR is increased by 0.49db, and the running speed is increased by 0.3ms on average when processing a single image compared with other classical models.
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改进的双回归非线性图像超分辨率模型
现有的超分辨率重建方法主要分为传统的超分辨率重建和深度学习的超分辨率重建。传统的图像放大、空间变换等超分辨率重建算法面临的主要问题是如何建立输入图像与目标图像之间的映射关系,并通过映射关系表达目标图像的像素值。超分辨率重建的一个突出问题是一对多映射关系之间不存在可实现的矩阵关系。在U-Net网络框架的基础上,对跳接模块进行了改进。与其他经典模型相比,采用卷积层、激活层和剩余信道块相结合的方法,在处理单幅图像时,整体模块运行效率提高2.4%,整体PNSR提高0.49db,运行速度平均提高0.3ms。
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