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Spatially adaptive statistical modeling of wavelet image coefficients and its application to denoising

机译:小波图像系数的空间自适应统计建模及其在去噪中的应用

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This paper deals with the application to denoising of a very simple but effective "local" spatially adaptive statistical model for the wavelet image representation that was previously introduced successfully in a compression context. Motivated by the intimate connection between compression and denoising, this paper explores the significant role of the underlying statistical wavelet image model. The model used here, a simplified version of the one proposed by LoPresto, Ramchandran and Orchard (see Proc. IEEE Data Compression Conf., 1997), is that of a mixture process of independent component fields having a zero-mean Gaussian distribution with unknown variances /spl sigma//sub s//sup 2/ that are slowly spatially-varying with the wavelet coefficient location s. We propose to use this model for image denoising by initially estimating the underlying variance field using a maximum likelihood (ML) rule and then applying the minimum mean squared error (MMSE) estimation procedure. In the process of variance estimation, we assume that the variance field is "locally" smooth to allow its reliable estimation, and use an adaptive window-based estimation procedure to capture the effect of edges. Despite the simplicity of our method, our denoising results compare favorably with the best reported results in the denoising literature.
机译:本文介绍了一种用于小波图像表示的非常简单但有效的“局部”空间自适应统计模型的去噪应用,该模型先前已在压缩环境中成功引入。出于压缩和降噪之间紧密联系的动机,本文探讨了基础统计小波图像模型的重要作用。这里使用的模型是LoPresto,Ramchandran和Orchard提出的模型的简化版本(请参见Proc。IEEE Data Compression Conf。,1997),是具有零均值高斯分布且未知的独立分量字段的混合过程的模型。随小波系数位置s在空间上缓慢变化的方差/ spl sigma // sub s // sup 2 /。我们建议通过首先使用最大似然(ML)规则估计基础方差字段,然后应用最小均方误差(MMSE)估计程序,来将该模型用于图像去噪。在方差估计的过程中,我们假定方差字段是“局部”平滑的,以允许其可靠的估计,并使用基于窗口的自适应估计过程来捕获边缘的影响。尽管我们的方法简单,但我们的去噪结果与去噪文献中报告的最佳结果相比还是令人满意的。

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