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Topographic Product Models Applied to Natural Scene Statistics

机译:应用于自然场景统计的地形产品模型

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摘要

We present an energy-based model that uses a product of generalized Student-t distributions to capture the statistical structure in data sets. This model is inspired by and particularly applicable to "natural" data sets such as images. We begin by providing the mathematical framework, where we discuss complete and overcomplete models and provide algorithms for training these models from data. Using patches of natural scenes, we demonstrate that our approach represents a viable alternative to independent component analysis as an interpretive model of biological visual systems. Although the two approaches are similar in flavor, there are also important differences, particularly when the representations are overcomplete. By constraining the interactions within our model, we are also able to study the topographic organization of Gabor-like receptive fields that our model learns. Finally, we discuss the relation of our new approach to previous work—in particular, gaussian scale mixture models and variants of independent components analysis.
机译:我们提出了一个基于能量的模型,该模型使用广义Student-t分布的乘积来捕获数据集中的统计结构。该模型受诸如图像之类的“自然”数据集的启发,并特别适用于该模型。我们从提供数学框架开始,在此我们讨论完整和过度完成的模型,并提供用于从数据训练这些模型的算法。使用自然场景的补丁,我们证明了我们的方法代表了独立成分分析作为生物视觉系统的解释模型的可行替代方案。尽管这两种方法的味道相似,但也存在重要的差异,尤其是当表示形式过于完整时。通过限制模型中的相互作用,我们还能够研究模型学习的类似Gabor的感受野的地形组织。最后,我们讨论了新方法与先前工作的关系,特别是高斯比例混合模型和独立成分分析的变体。

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