国防科技大学学报2024,Vol.46Issue(2):238-246,9.DOI:10.11887/j.cn.202402024
加权核范数最小化和改进小波阈值函数的图像去噪算法
Image denoising algorithm based on weighted kernel norm minimization and improved wavelet threshold function
摘要
Abstract
In view of the structural residual noise in the weighted nuclear norm minimization algorithm and the inability to maintain the edge structure of the image,a denoising method that minimizes the weighted kernel norm and improves the wavelet threshold was adopted.The total variation model to perform preliminary denoising of the noise image,and the noisy image to subtract the preliminary denoised image were used.An improved wavelet threshold function was used to denoise the noise difference image obtained after subtraction.The denoised residual image was superimposed with the preliminary denoised image,and the superimposed image was finally denoised using an iterative weighted kernel norm minimization algorithm based on the residual noise level.Compared with the more popular denoising algorithms,the PSNR and SSIM processed by this algorithm are improved,the texture structure of the image can be maintained,and the effect is better in a high-noise environment.关键词
加权核范数/小波变换/噪声残差/全变分Key words
weighted kernel norm/wavelet transform/noise residual/total variation分类
信息技术与安全科学引用本文复制引用
郭昕刚,许连杰,程超,霍金花..加权核范数最小化和改进小波阈值函数的图像去噪算法[J].国防科技大学学报,2024,46(2):238-246,9.基金项目
吉林省教育厅基金资助项目(JKH20210754KJ) (JKH20210754KJ)