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Estimating the Noise Level Function with the Tree of Shapes and Non-parametric Statistics

机译:用形状树和非参数统计量估计噪声水平函数

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The knowledge of the noise level within an image is a valuable information for many image processing applications. Estimating the noise level function (NLF) requires the identification of homogeneous regions, upon which the noise parameters are computed. Sutour et al. have proposed a method to estimate this NLF based on the search for homogeneous regions of square shape. We generalize this method to the search for homogeneous regions with arbitrary shape thanks to the tree of shapes representation of the image under study, thus allowing a more robust and precise estimation of the noise level function.
机译:对于许多图像处理应用来说,图像内噪声水平的知识是有价值的信息。估计噪声水平函数(NLF)需要识别均质区域,然后在该区域上计算噪声参数。 Sutour等。已经提出了一种基于对正方形均质区域的搜索来估计该NLF的方法。由于要研究的图像的形状表示树,我们将这种方法概括为搜索具有任意形状的均质区域,从而可以对噪声水平函数进行更鲁棒和精确的估计。

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