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An adaptive noise removal approach for restoration of digital images corrupted by multimodal noise

机译:一种自适应噪声消除方法,用于恢复被多峰噪声破坏的数字图像

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摘要

Data smoothing algorithms are commonly applied to reduce the level of noise and eliminate the weak textures contained in digital images. Anisotropic diffusion algorithms form a distinct category of noise removal approaches that implement the smoothing process locally in agreement with image features such as edges that are typically determined by applying diverse partial differential equation (PDE) models. While this approach is opportune since it allows the implementation of feature-preserving data smoothing strategies, the inclusion of the PDE models in the formulation of the data smoothing process compromises the performance of the anisotropic diffusion schemes when applied to data corrupted by non-Gaussian and multimodal image noise. ududIn this paper we first evaluate the positive aspects related to the inclusion of a multi-scale edge detector based on the generalisation of the Di Zenzo operator into the formulation of the anisotropic diffusion process. Then, we introduce a new approach that embeds the vector median filtering into the discrete implementation of the anisotropic diffusion in order to improve the performance of the noise removal algorithm when applied to multimodal noise suppression. To evaluate the performance of the proposed data smoothing strategy, a large number of experiments on various types of digital images corrupted by multimodal noise were conducted.Keywords — Anisotropic diffusion, vector median filtering, feature preservation, multimodal noise, noise removal.
机译:数据平滑算法通常用于降低噪声水平并消除数字图像中包含的弱纹理。各向异性扩散算法形成了不同的噪声消除方法类别,这些噪声消除方法与图像特征(例如通常通过应用不同的偏微分方程(PDE)模型确定的边缘)相一致地局部实施平滑处理。尽管此方法是适当的,因为它允许实施保留特征的数据平滑策略,但当将PDE模型应用于数据平滑过程时,如果将其包含在非高斯和非高斯破坏的数据中,则各向异性扩散方案的性能会受到影响。多峰图像噪声。 ud ud在本文中,我们首先基于Di Zenzo算子在各向异性扩散过程公式化中的推广,评估了与包含多尺度边缘检测器有关的积极方面。然后,我们引入了一种新的方法,该方法将矢量中值滤波嵌入到各向异性扩散的离散实现中,以便在应用于多峰噪声抑制时提高噪声去除算法的性能。为了评估所提出的数据平滑策略的性能,对由多峰噪声破坏的各种类型的数字图像进行了大量实验。关键词—各向异性扩散,矢量中值滤波,特征保留,多峰噪声,噪声去除。

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