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Image denoising via iterative diffusion methods combining two edge-indicators with adaptive thresholds

机译:通过迭代扩散方法的图像去噪,将两个边缘指示器与自适应阈值相结合

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摘要

This paper presents two effective iterative diffusion models equipped with new diffusion coefficients and adaptive thresholds for image denoising. First, two new diffusion coefficients which adopt two distinct edge-indicators (i.e., spatial gradient and local gray-level variance) to capture discontinuities in an image, are proposed to improve the robustness of the proposed models. Second, two tractable adaptive thresholds of the diffusion coefficients are further proposed to enhance the capability for feature preservation. Third, a series of experiments are conducted to verify the effectiveness of the proposed models with regard to the quantitative metrics and visual performance. Overall, compared to the traditional anisotropic diffusion models, the proposed models can improve the average of PSNR by 2.4% and SSIM by 5.3% with the desirable visual performance.
机译:本文介绍了两个有效的迭代扩散模型,配备了新的扩散系数和图像去噪的自适应阈值。 首先,提出了两个采用两个不同边缘指示器(即空间梯度和局部灰度方差)来捕获图像中的不连续性的新的扩散系数,以改善所提出的模型的鲁棒性。 其次,进一步提出了扩散系数的两个贸易自适应阈值以增强特征保存的能力。 第三,进行了一系列实验,以验证所提出的模型关于定量度量和视觉性能的有效性。 总体而言,与传统的各向异性扩散模型相比,所提出的模型可以通过所需的视觉性能将PSNR的平均值提高2.4%,SSIM的平均值为5.3%。

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