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Image variational denoising using gradient fidelity on curvelet shrinkage

机译:基于曲线保真度梯度保真度的图像变分去噪

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摘要

A new variational image model is presented for image restoration using a combination of the curvelet shrinkage method and the total variation (TV) functional. In order to suppress the staircasing effect and curvelet-like artifacts, we use the multiscale curvelet shrinkage to compute an initial estimated image, and then we propose a new gradient fidelity term, which is designed to force the gradients of desired image to be close to the curvelet approximation gradients. Then, we introduce the Euler-Lagrange equation and make an investigation on the mathematical properties. To improve the ability of preserving the details of edges and texture, the spatial-varying parameters are adaptively estimated in the iterative process of the gradient descent flow algorithm. Numerical experiments demonstrate that our proposed method has good performance in alleviating both the staircasing effect and curvelet-like artifacts, while preserving fine details.
机译:提出了一种新的变分图像模型,结合了Curvelet收缩方法和总变分(TV)功能,可用于图像恢复。为了抑制阶梯效应和类似曲线波的伪影,我们使用多尺度曲线波收缩来计算初始估计图像,然后提出一个新的梯度保真度项,该项旨在迫使所需图像的梯度接近Curvelet逼近梯度。然后,我们介绍了Euler-Lagrange方程,并对数学性质进行了研究。为了提高保留边缘和纹理细节的能力,在梯度下降流算法的迭代过程中自适应估计空间变化参数。数值实验表明,我们提出的方法在减轻阶梯效应和曲​​线样伪像的同时,保留了精细的细节方面具有良好的性能。

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