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Algorithms from statistical physics for generative models of images

机译:统计物理学中用于图像生成模型的算法

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A general framework for defining generative models of images is Markov random fields (MRFs), with shift-invariant (homogeneous) MRFs being an important special case for modeling textures and generic images. Given a dataset of natural images and a set of filters from which filter histogram statistics are obtained, a shift-invariant MRF can be defined (as in [Neural Comput. 9 (1997) 1627]) as a distribution of images whose mean filter histogram values match the empirical values obtained from the data set. Certain parameters in the MRF model, called potentials, must be determined in order for the model to match the empirical statistics. Standard methods for calculating the potentials are computationally very demanding, such as Generalized Iterative Scaling (GIS), an iterative procedure that converges to the correct potential values. We define a fast approximation, called BKGIS, which uses the Bethe-Kikuchi approximation from statistical physics to speed up the GIS procedure. Results are demonstrated on a model using two filters, and we show synthetic images that have been sampled from the model. Finally, we show a connection between GIS and our previous work on the g-factor.
机译:定义图像生成模型的一般框架是马尔可夫随机场(MRF),而不变位移(均匀)MRF是建模纹理和通用图像的重要特殊情况。给定自然图像的数据集和从中获得滤波器直方图统计信息的一组滤波器,可以将平移不变的MRF定义为(如[Neural Comput。9(1997)1627]中所示)的图像分布,其平均滤波器直方图值与从数据集获得的经验值匹配。必须确定MRF模型中的某些参数(称为电势),以使模型与经验统计数据匹配。用于计算电势的标准方法在计算上要求很高,例如通用迭代缩放(GIS),这是一种收敛到正确电势值的迭代过程。我们定义了一种称为BKGIS的快速近似,它使用统计物理学中的Bethe-Kikuchi近似来加快GIS程序。在使用两个滤镜的模型上演示了结果,并显示了从模型中采样的合成图像。最后,我们展示了GIS与先前关于g因子的研究之间的联系。

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