2019
DOI: 10.1080/02564602.2019.1565960
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Non-linear Diffusion Models for Despeckling of Images: Achievements and Future Challenges

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Cited by 18 publications
(15 citation statements)
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“…In the literature [3,4], it was found that the edge and slope regions of an image can be identified by differential curvature, and both constructed two adaptive diffusion coefficients to discriminate the whole image. In the literature [5], a nonlinear anisotropic combined diffusion model was designed; this model is mainly by choosing different diffusion methods when facing different regions of the image, homogeneous diffusion for smooth regions, and mean curvature diffusion for edge regions, and the effectiveness of this model was experimentally demonstrated. The literature [6] combined the concept of fractional order to improve a model of anisotropic diffusion, which also led to the research on the application of fractional order in the field of image edge detection.…”
Section: Related Studiesmentioning
confidence: 99%
“…In the literature [3,4], it was found that the edge and slope regions of an image can be identified by differential curvature, and both constructed two adaptive diffusion coefficients to discriminate the whole image. In the literature [5], a nonlinear anisotropic combined diffusion model was designed; this model is mainly by choosing different diffusion methods when facing different regions of the image, homogeneous diffusion for smooth regions, and mean curvature diffusion for edge regions, and the effectiveness of this model was experimentally demonstrated. The literature [6] combined the concept of fractional order to improve a model of anisotropic diffusion, which also led to the research on the application of fractional order in the field of image edge detection.…”
Section: Related Studiesmentioning
confidence: 99%
“…3, where the speckle noise cancellation (SNC) factors for each of the i-th frame g i (m, n) multiplies with h ei (m, n), to obtain an estimate of the true US image ri (m, n) for that frame. In the absense of additive noise in (13) and estimation error in the estimated speckle pattern Ûi , the estimated ultrasound image of the i-th frame, Ri , can be obtained in matrix form as…”
Section: True Imagementioning
confidence: 99%
“…Again, the nonlinear approaches based on the diffusion equation [12] not only preserves edges but also enhances edges by inhibiting diffusion across edges and allowing diffusion on either side of the edge. However, selection of the parameter-values is a major issue in this method, as a value of parameter that is smaller than the optimum one leads to unsatisfactory noise suppression whereas a higher parameter-value results in poor structure preservation [13].…”
Section: Introductionmentioning
confidence: 99%
“…This attraction is characterized by several modifications of the Perona-Malik model that are published in different journals (Guo et al, 2012;Kessy et al, 2017a;Kessy et al, 2017b;Maiseli et al, 2018). These works are establishing stable and accurate models that deal with different noise variants and staircase artifacts caused by the ill-posed aspect associated with the partial differentiation applied in the Perona-Malik kernel (Liu et al, 2013;Jain and Ray, 2019;Yao et al, 2019). In general, the Perona-Malik model is made of a diffusion kernel functional that approximates the pixel value and the regularization term, which has been added to control the illposed aspect of the model and prevents staircase artifacts in the despeckled image.…”
Section: Introductionmentioning
confidence: 99%