Image reconstruction based on approximate function and modified conjugate gradient

Ping Gong, Guohua Li, Jian Li
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引用次数: 0

Abstract

This paper proposed an approach combines the advantages of L1 norm and TV norm by combining L1 norm and TV norm to solve the image reconstruction problems. And the proposed approach reconstructs an image from the measured values by using the modified conjugate gradient algorithm for the purpose of improving the efficiency of image reconstruction. The objective function is constructed using the approximate function based on the L1 norm and TV norm. A sparse transformation is applied to the original image first. The random Gaussian matrix is then employed to perform a compressive measurement on the 2-D sparse signal. To reconstruct the image a regularised reconstruction model is established through the approximate norm that combines L1 norm and TV norm and the gradient of the approximate norm is computed. The simulation results demonstrate the ability of the proposed method to reconstruct images more effectively and produce better results in terms of objective indicators such as PSNR and SSIM than classical methods.
基于近似函数和修正共轭梯度的图像重构
本文提出了一种结合L1范数和TV范数优点的方法,将L1范数和TV范数结合起来解决图像重建问题。该方法利用改进的共轭梯度算法从测量值重建图像,以提高图像重建的效率。利用基于L1范数和TV范数的近似函数构造目标函数。首先对原始图像进行稀疏变换。然后利用随机高斯矩阵对二维稀疏信号进行压缩测量。为了重建图像,通过结合L1范数和TV范数的近似范数建立正则化重建模型,并计算近似范数的梯度。仿真结果表明,与经典方法相比,该方法能够更有效地重建图像,并在PSNR和SSIM等客观指标上取得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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