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Natural Images, Gaussian Mixtures and Dead Leaves

机译:自然图像,高斯混合和枯叶

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Simple Gaussian Mixture Models (GMMs) learned from pixels of natural image patches have been recently shown to be surprisingly strong performers in modeling the statistics of natural images. Here we provide an in depth analysis of this simple yet rich model. We show that such a GMM model is able to compete with even the most successful models of natural images in log likelihood scores, denoising performance and sample quality. We provide an analysis of what such a model learns from natural images as a function of number of mixture components — including covariance structure, contrast variation and intricate structures such as textures, boundaries and more. Finally, we show that the salient properties of the GMM learned from natural images can be derived from a simplified Dead Leaves model which explicitly models occlusion, explaining its surprising success relative to other models.
机译:最近,从自然图像斑块的像素中学习到的简单高斯混合模型(GMM)在模拟自然图像的统计数据方面表现出令人惊讶的强大性能。在这里,我们对这个简单而丰富的模型进行了深入的分析。我们证明,这种GMM模型甚至可以在对数似然分数,去噪性能和样本质量方面与最成功的自然图像模型竞争。我们对这种模型从自然图像中学到的东西进行了分析,该函数是混合成分数量的函数-包括协方差结构,对比度变化和复杂的结构(例如纹理,边界等)。最后,我们表明,从自然图像中学到的GMM的显着特性可以来自简化的“死叶”模型,该模型显式地对遮挡进行建模,相对于其他模型,它解释了令人惊讶的成功。

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