数字图像去噪的过完备正交变换混合多分辨率分析与加权平均

Jingming Xu, Fuhuei Lin
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引用次数: 0

摘要

噪声降噪是数字图像质量增强的一个重要研究课题,在理论和应用方面都得到了广泛的研究。加权平均与过完全正交变换(WAOOT)已经证明了它能够有效地去除i.i.d噪声,同时保持边缘的清晰度。本文证明了过完备变换集的权值依赖于噪声协方差矩阵。在真实数字图像中,提出了一种高斯协方差模型来描述噪声的相关性,并据此建立了高斯金字塔多分辨率分析体系来去相关非噪声。并利用WAOOT算法在每一层进行降噪。通过全局硬阈值自适应迭代和变换边缘像素块大小判别,进一步细化了WAOOT算法的简化解。仿真结果表明,该方法在客观和主观去噪图像质量上都比现有算法有了很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid multi-resolution analysis and weighted averaging of overcomplete orthogonal transform scheme for digital image denoising
Noise reduction is a crucial research topic of digital image quality enhancement in both theoretical and applied perspectives, and attracts extensive research efforts in decades. Weighted averaging with overcomplete orthogonal transform (WAOOT) has shown its ability to effectively remove i.i.d. noise, while maintaining edge sharpness. In this paper, the weights of the overcomplete transform set are showed to be dependent on the noise covariance matrix for non-i.i.d. noise in real digital images, a Gaussian covariance model is proposed to describe the noise correlations, and accordingly a Gaussian pyramidal multi-resolution analysis architecture is built to decorrelate the non-i.i.d. noise and reduce it by utilizing WAOOT algorithm at each layer. The simplified solution of WAOOT algorithm is further refined by global hard threshold adaption iterations and transform block size discrimination on edge pixels. Simulation results show that the proposed scheme achieves substantial improvements in both objective and subjective denoised image quality over state-of-the-art algorithms.
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