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Image decomposition using a second-order variational model and wavelet shrinkage

机译:使用二阶变分模型和小波收缩的图像分解

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The paper is devoted to the new model for image decomposition, that splits an image $f$ into three components $u+v+omega$ , with $u$ a piecewise -smooth or the ``cartoon'' component, $v$ a texture component and $omega$ the noise part in variational approach. This decomposition model is in fact incorporates the advantages of two preceding models: the second-order total variation minimization of Rudin - Osher - Fatemi ( ROF2 ), and wavelet shrinkage for oscillatory functions. ? This decomposition model is presented as an extension of the three components decomposition algorithm of Aujol et al. in cite {JAC}. It also continues the idea introduced previously by authors in cite {TPB}, for two components decomposition model. The ROF2 model was first proposed by Bergounioux et al. in cite {BP}, it is an improved regularization method to overcome the undesirable staircasing effect. The wavelet shrinkage is well combined to separate the oscillating part due to texture from that due to noise. Experimental results validate the proposed algorithm and demonstrate that the image decomposition model presents effective and comparable performance to other state-of-the-art models.
机译:本文致力于图像分解的新模型,将图像$ F $分成三个组件$ u + v +ω$,以$ u $ a分段 - smooth或````````````````$ v $纹理组件和$ OMEGA $ ove分析方法的噪声部分。实际上,该分解模型采用了两个前面模型的优点:鲁道涅 - Osher - Fatemi(ROF2)的二阶总变化最小化,以及用于振荡功能的小波收缩。 ?该分解模型被呈现为Aujol等人的三个组件分解算法的扩展。在 cite {jac}。它还继续前面由 Cite {TPB}的作者引入的想法,对于两个组件分解模型。首先由Bergounioux等人提出rof2模型。在 cite {bp}中,它是一种改进的正则化方法,以克服不期望的楼梯效果。小波收缩良好地结合起来,以将振荡部分分开由于噪音的质地。实验结果验证了所提出的算法,并证明图像分解模型对其他最先进的模型具有有效和可比性的性能。

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