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首页> 外文期刊>International Journal of Wavelets, Multiresolution and Information Processing >WAVELET CHARACTERIZATION OF DYADIC BMO NORM AND ITS APPLICATION IN IMAGE DECOMPOSITION FOR DISTINGUISHING BETWEEN TEXTURE AND NOISE
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WAVELET CHARACTERIZATION OF DYADIC BMO NORM AND ITS APPLICATION IN IMAGE DECOMPOSITION FOR DISTINGUISHING BETWEEN TEXTURE AND NOISE

机译:微型BMO规范的小波表征及其在图像分解中区分纹理和噪声的应用

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摘要

Following the oscillating theory of Meyer, many image decomposition models have been proposed to split an image into two parts: structures and textures. But these models are not effective in the case of a noisy image, because both textures and noise are oscillating patterns. In this paper, we use the local variance measure to separate noise from textures. Firstly, we examine the relationship between dyadic BMO norm and local variance. Then, we give the wavelet representation of dyadic BMO norm and local variance, and further propose a method to distinguish between texture and noise in wavelet domain. In high frequency wavelet domain, we propose a decomposition model using local variance as constraints, while in low frequency domain, we use the shrinkage scheme to distinguish them. Finally, we present various numerical results on images to demonstrate the potential of our method.
机译:在Meyer的振荡理论之后,已经提出了许多图像分解模型将图像分成两部分:结构和纹理。 但是在嘈杂的图像的情况下,这些模型无效,因为纹理和噪声都是振荡模式。 在本文中,我们使用本地方差测量来分离纹理的噪音。 首先,我们检查二元BMO规范与局部方差之间的关系。 然后,我们给出二元BMO规范和局部方差的小波表示,并进一步提出了一种区分小波域中的纹理和噪声的方法。 在高频小波域中,我们提出了一种使用本地方差作为约束的分解模型,而在低频域中,我们使用收缩方案来区分它们。 最后,我们在图像上呈现各种数值结果来展示我们方法的潜力。

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