College of Sciences, Northwest A&F University, Yangling, P. R. China.
PLoS One. 2022 Mar 3;17(3):e0264793. doi: 10.1371/journal.pone.0264793. eCollection 2022.
Mixed Gaussian and Random-valued impulse noise (RVIN) removal is still a big challenge in the field of image denoising. Existing denoising algorithms have defects in denoising performance and computational complexity. Based on the improved "detecting then filtering" strategy and the idea of inpainting, this paper proposes an efficient method to remove mixed Gaussian and RVIN. The proposed algorithm contains two phases: noise classification and noise removal. The noise classifier is based on Adaptive center-weighted median filter (ACWMF), three-sigma rule and extreme value processing. Different from the traditional "detecting then filtering" strategy, a preliminary RVIN removal step is added to the noise removal phase, which leads to three steps in this phase: preliminary RVIN removal, Gaussian noise removal and final RVIN removal. Firstly, RVIN is processed to obtain a noisy image approximately corrupted by Gaussian noise only. Subsequently, Gaussian noise is re-estimated and then denoised by Block Matching and 3D filtering method (BM3D). At last, the idea of inpainting is introduced to further remove RVIN. Extensive experimental results demonstrate that the proposed method outperforms quantitatively and visually to the state-of-the-art mixed Gaussian and RVIN removal methods. In addition, it greatly shortens the computation time.
混合高斯和随机值脉冲噪声(RVIN)去除仍然是图像去噪领域的一大挑战。现有的去噪算法在去噪性能和计算复杂度方面存在缺陷。本文基于改进的“检测然后滤波”策略和修复思想,提出了一种有效去除混合高斯和 RVIN 的方法。所提出的算法包含两个阶段:噪声分类和噪声去除。噪声分类器基于自适应中心加权中值滤波器(ACWMF)、三个标准差规则和极值处理。与传统的“检测然后滤波”策略不同,在噪声去除阶段添加了初步的 RVIN 去除步骤,这导致该阶段有三个步骤:初步 RVIN 去除、高斯噪声去除和最终 RVIN 去除。首先,处理 RVIN 以获得仅由高斯噪声部分污染的噪声图像。随后,重新估计高斯噪声并通过块匹配和 3D 滤波方法(BM3D)进行去噪。最后,引入修复思想以进一步去除 RVIN。大量实验结果表明,所提出的方法在定量和视觉上均优于最新的混合高斯和 RVIN 去除方法。此外,它大大缩短了计算时间。