Combined total variation of first and fractional orders for Poisson noise removal in digital images

C. Pham, Thi Thu Tran, Minh-Trien Pham, T. Nguyen
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Abstract

Introduction: Many methods have been proposed to handle the image restoration problem with Poisson noise. A popular approach to Poissonian image reconstruction is the one based on Total Variation. This method can provide significantly sharp edges and visually fine images, but it results in piecewise-constant regions in the resulting images. Purpose: Developing an adaptive total variation-based model for the reconstruction of images contaminated by Poisson noise, and an algorithm for solving the optimization problem. Results: We proposed an effective way to restore images degraded by Poisson noise. Using the Bayesian framework, we proposed an adaptive model based on a combination of first-order total variation and fractional order total variation. The first-order total variation model is efficient for suppressing the noise and preserving the keen edges simultaneously. However, the first-order total variation method usually causes artifact problems in the obtained results. To avoid this drawback, we can use high-order total variation models, one of which is the fractional-order total variation-based model for image restoration. In the fractional-order total variation model, the derivatives have an order greater than or equal to one. It leads to the convenience of computation with a compact discrete form. However, methods based on the fractional-order total variation may cause image blurring. Thus, the proposed model incorporates the advantages of two total variation regularization models, having a significant effect on the edge-preserving image restoration. In order to solve the considered optimization problem, the Split Bregman method is used. Experimental results are provided, demonstrating the effectiveness of the proposed method.  Practical relevance: The proposed method allows you to restore Poissonian images preserving their edges. The presented numerical simulation demonstrates the competitive performance of the model proposed for image reconstruction. Discussion: From the experimental results, we can see that the proposed algorithm is effective in suppressing noise and preserving the image edges. However, the weighted parameters in the proposed model were not automatically selected at each iteration of the proposed algorithm. This requires additional research.
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数字图像泊松噪声去除中一阶和分数阶综合总变分
针对泊松噪声的图像恢复问题,已经提出了许多方法。一种流行的泊松图像重建方法是基于全变分的泊松图像重建方法。该方法可以提供明显清晰的边缘和视觉上精细的图像,但会导致图像中出现分段常数区域。目的:建立一种基于自适应全变分的泊松噪声污染图像重建模型,并给出求解该模型优化问题的算法。结果:提出了一种有效的泊松噪声图像复原方法。利用贝叶斯框架,提出了一阶总变分和分数阶总变分相结合的自适应模型。一阶全变分模型能有效地抑制噪声,同时保持锐利边缘。然而,一阶全变分法通常会在得到的结果中产生伪影问题。为了避免这个缺点,我们可以使用高阶全变差模型,其中一种是基于分数阶全变差的图像恢复模型。在分数阶全变分模型中,导数的阶数大于或等于1。它以紧凑的离散形式方便了计算。然而,基于分数阶总变分的方法可能导致图像模糊。因此,该模型结合了两种全变分正则化模型的优点,对图像的保边恢复效果显著。为了解决所考虑的优化问题,采用了Split Bregman方法。实验结果证明了该方法的有效性。实际意义:提出的方法允许您恢复泊松图像,保留其边缘。数值仿真结果表明,该模型具有较好的图像重建性能。讨论:从实验结果可以看出,该算法在抑制噪声和保持图像边缘方面是有效的。然而,在算法的每次迭代中,模型中的加权参数并不是自动选择的。这需要进一步的研究。
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来源期刊
Informatsionno-Upravliaiushchie Sistemy
Informatsionno-Upravliaiushchie Sistemy Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
35
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