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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Modeling Multiscale Subbands of Photographic Images with Fields of Gaussian Scale Mixtures
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Modeling Multiscale Subbands of Photographic Images with Fields of Gaussian Scale Mixtures

机译:用高斯尺度混合场对摄影图像的多尺度子带建模

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摘要

The local statistical properties of photographic images, when represented in a multi-scale basis, have been described using Gaussian scale mixtures. Here, we use this local description as a substrate for constructing a global field of Gaussian scale mixtures (FoGSMs). Specifically, we model multi-scale subbands as a product of an exponentiated homogeneous Gaussian Markov random field (hGMRF) and a second independent hGMRF. We show that parameter estimation for this model is feasible, and that samples drawn from a FoGSM model have marginal and joint statistics similar to subband coefficients of photographic images. We develop an algorithm for removing additive Gaussian white noise based on the FoGSM model, and demonstrate denoising performance comparable with state-of-the-art methods.
机译:当以多尺度为基础表示时,已经使用高斯尺度混合物描述了摄影图像的局部统计特性。在这里,我们将这种局部描述用作构建高斯尺度混合物(FoGSMs)全球领域的基础。具体来说,我们将多尺度子带建模为指数均质高斯马尔可夫随机场(hGMRF)和第二个独立hGMRF的乘积。我们表明该模型的参数估计是可行的,并且从FoGSM模型提取的样本具有与摄影图像的子带系数相似的边际和联合统计量。我们开发了一种基于FoGSM模型的去除加性高斯白噪声的算法,并证明了与最新技术相当的降噪性能。

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