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Tchebichef and Adaptive Steerable-Based Total Variation Model for Image Denoising

机译:Tchebichef和基于自适应转向的总变分模型进行图像去噪

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Structural information, in particular, the edges present in an image, is the most important part to be noticed by human eyes. Therefore, it is important to denoise this information effectively for better visualization. Recently, research work has been carried out to characterize the structural information into plain and edge patches and denoise them separately. However, the information about the geometrical orientation of the edges is not considered, leading to sub-optimal denoising results. This has motivated us to introduce in this paper an adaptive steerable total variation regularizer (ASTV) based on geometric moments. The proposed ASTV regularizer is capable of denoising the edges based on their geometrical orientation, thus boosting the denoising performance. Further, earlier works exploited the sparsity of the natural images in DCT and wavelet domains which help in improving the denoising performance. Based on this observation, we introduce the sparsity of an image in orthogonal moment domain, in particular, the Tchebichef moment. Then, we propose a new sparse regularizer, which is a combination of the Tchebichef moment and ASTV-based regularizers. The overall denoising framework is optimized using split Bregman-based multivariable minimization technique. Experimental results demonstrate the competitiveness of the proposed method compared with the existing ones in terms of both the objective and subjective image qualities.
机译:结构信息,特别是图像中存在的边缘,是人眼最重要的部分。因此,重要的是有效地对这些信息进行去噪,以获得更好的可视化效果。近来,已经进行了研究工作以将结构信息表征为平坦和边缘斑块,并分别对其进行去噪。但是,未考虑有关边缘的几何方向的信息,从而导致次优的去噪结果。这促使我们在本文中引入基于几何矩的自适应可控总变化量正则化器(ASTV)。所提出的ASTV正则器能够基于边缘的几何方向对它们进行去噪,从而提高了去噪性能。此外,早期的工作利用了DCT和小波域中自然图像的稀疏性,这有助于改善去噪性能。基于此观察,我们介绍了正交矩域中图像的稀疏性,尤其是Tchebichef矩。然后,我们提出了一种新的稀疏正则器,它是Tchebichef矩和基于ASTV的正则器的组合。使用基于拆分Bregman的多变量最小化技术优化了整体降噪框架。实验结果证明了该方法在客观和主观图像质量上都比现有方法更具竞争力。

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