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Learning Natural Image Structure with a Horizontal Product Model

机译:使用水平产品模型学习自然图像结构

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摘要

We present a novel extension to Independent Component Analysis (ICA), where the data is generated as the product of two submodels, each of which follow an ICA model, and which combine in a horizontal fashion. This is in contrast to previous nonlinear extensions to ICA which were based on a hierarchy of layers. We apply the product model to natural image patches and report the emergence of localized masks in the additional network layer, while the Gabor features that are obtained in the primary layer change their tuning properties and become less localized. As an interpretation we suggest that the model learns to separate the localization of image features from other properties, since identity and position of a feature are plausibly independent. We also show that the horizontal model can be interpreted as an overcomplete model where the features are no longer independent.
机译:我们提出了对独立成分分析(ICA)的新颖扩展,其中数据是作为两个子模型的乘积生成的,每个子模型都遵循ICA模型,并且以水平方式组合。这与以前的ICA基于层层次结构的非线性扩展相反。我们将产品模型应用于自然图像补丁,并报告了在附加网络层中出现局部遮罩的情况,而在第一层中获得的Gabor特征会更改其调整属性并变得局部化程度较低。作为一种解释,我们建议模型学习将图像特征的本地化与其他属性分开,因为特征的身份和位置似乎是独立的。我们还表明,水平模型可以解释为特征不再独立的超完备模型。

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