Institut Telecom, Telecom Paris-Tech, CNRS LTCI, Paris, France.
IEEE Trans Image Process. 2009 Dec;18(12):2661-72. doi: 10.1109/TIP.2009.2029593. Epub 2009 Aug 7.
Image denoising is an important problem in image processing since noise may interfere with visual or automatic interpretation. This paper presents a new approach for image denoising in the case of a known uncorrelated noise model. The proposed filter is an extension of the nonlocal means (NL means) algorithm introduced by Buades , which performs a weighted average of the values of similar pixels. Pixel similarity is defined in NL means as the Euclidean distance between patches (rectangular windows centered on each two pixels). In this paper, a more general and statistically grounded similarity criterion is proposed which depends on the noise distribution model. The denoising process is expressed as a weighted maximum likelihood estimation problem where the weights are derived in a data-driven way. These weights can be iteratively refined based on both the similarity between noisy patches and the similarity of patches extracted from the previous estimate. We show that this iterative process noticeably improves the denoising performance, especially in the case of low signal-to-noise ratio images such as synthetic aperture radar (SAR) images. Numerical experiments illustrate that the technique can be successfully applied to the classical case of additive Gaussian noise but also to cases such as multiplicative speckle noise. The proposed denoising technique seems to improve on the state of the art performance in that latter case.
图像去噪是图像处理中的一个重要问题,因为噪声可能会干扰视觉或自动解释。本文提出了一种在已知无相关噪声模型情况下的图像去噪新方法。所提出的滤波器是 Buades 引入的非局部均值(NL 均值)算法的扩展,该算法对相似像素的值进行加权平均。在 NL 均值中,像素相似性定义为补丁(以每个两个像素为中心的矩形窗口)之间的欧几里得距离。在本文中,提出了一种更通用和基于统计学的相似性标准,该标准取决于噪声分布模型。去噪过程被表示为加权最大似然估计问题,其中权重以数据驱动的方式导出。这些权重可以根据噪声补丁之间的相似性以及从先前估计中提取的补丁之间的相似性进行迭代细化。我们表明,该迭代过程显著提高了去噪性能,特别是在低信噪比图像(如合成孔径雷达 (SAR) 图像)的情况下。数值实验表明,该技术可以成功应用于加性高斯噪声的经典情况,也可以应用于乘性斑点噪声等情况。在后者情况下,所提出的去噪技术似乎提高了现有技术的性能。