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Learning Sparse Topographic Representations with Products of Student-t Distributions

机译:学习稀疏地形表示与学生-T发行版产品

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We propose a model for natural images in which the probability of an image is proportional to the product of the probabilities of some filter outputs. We encourage the system to find sparse features by using a Student-t distribution to model each filter output. If the t-distribution is used to model the combined outputs of sets of neurally adjacent filters, the system learns a topographic map in which the orientation, spatial frequency and location of the filters change smoothly across the map. Even though maximum likelihood learning is intractable in our model, the product form allows a relatively efficient learning procedure that works well even for highly overcomplete sets of filters. Once the model has been learned it can be used as a prior to derive the "iterated Wiener filter" for the purpose of denoising images.
机译:我们提出了一种自然图像模型,其中图像的概率与一些滤波器输出的概率的乘积成比例。我们鼓励系统通过使用Student-T分发来模拟每个过滤器输出来找到稀疏功能。如果T分布用于建模神经相邻过滤器集合的组合输出,则系统学习地形图,其中滤波器的方向,空间频率和位置在地图上平滑地改变。尽管在我们的模型中最大的似然学习是棘手的,但产品形式允许相对有效的学习过程,即使对于高度过度可逆的过滤器而言,也可以很好地运行。一旦学习了模型,它可以用作在导出“迭代维纳滤波器”之前,以用于去噪图像。

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