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Variational denoising of partly textured images

机译:部分纹理图像的变分去噪

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The Rudin-Osher-Fatemi model is a widely used variational denoising algorithm which favors piecewise constant solutions. Although edge sharpness and location are well preserved, some local features such as textures and small details are often diminished with noise simultaneously. This paper aims to better preserve these local features using a similar variational framework. We introduce a texture detecting function according to the derivatives of the noisy textured image. Then this function is used to construct a spatially adaptive fidelity term, which adjusts the denoising extent in terms of the local features. Numerical results show that our method is superior to the Rudin-Osher-Fatemi model in both signal-to-noise ratio and visual quality. Moreover, part of our results are also compared with other state-of-the-art methods including a variational method and a non local means filter. The comparison shows that our method is competitive with these two methods in restoration quality but is much faster.
机译:Rudin-Osher-Fatemi模型是一种广泛使用的变分去噪算法,它支持分段常数解。尽管可以很好地保留边缘的锐度和位置,但是通常会同时因噪点而减少某些局部特征(例如纹理和小的细节)。本文旨在使用类似的变体框架更好地保留这些局部特征。我们根据嘈杂的纹理图像的导数引入纹理检测功能。然后,使用此函数来构造空间自适应保真度项,该项会根据局部特征调整降噪程度。数值结果表明,我们的方法在信噪比和视觉质量上均优于Rudin-Osher-Fatemi模型。此外,我们的部分结果还与其他最新方法(包括变分方法和非局部均值滤波器)进行了比较。比较表明,我们的方法在恢复质量上与这两种方法相比具有竞争优势,但速度要快得多。

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