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Learning Features by Contrasting Natural Images with Noise

机译:通过将自然图像与噪声进行对比来学习功能

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Modeling the statistical structure of natural images is interesting for reasons related to neuroscience as well as engineering. Currently, this modeling relies heavily on generative probabilistic models. The estimation of such models is, however, difficult, especially when they consist of multiple layers. If the goal lies only in estimating the features, i.e. in pinpointing structure in natural images, one could also estimate instead a discriminative probabilistic model where multiple layers are more easily handled. For that purpose, we propose to estimate a classifier that can tell natural images apart from reference data which has been constructed to contain some known structure of natural images. The features of the classifier then reveal the interesting structure. Here, we use a classifier with one layer of features and reference data which contains the covariance-structure of natural images. We show that the features of the classifier are similar to those which are obtained from generative probabilistic models. Furthermore, we investigate the optimal shape of the nonlinearity that is used within the classifier.
机译:由于与神经科学和工程学相关的原因,对自然图像的统计结构进行建模很有趣。当前,该建模严重依赖于生成概率模型。但是,此类模型的估计很困难,尤其是当它们由多层组成时。如果目标仅在于估计特征(即精确定位自然图像中的结构),则还可以估计一种判别概率模型,该模型更容易处理多层。为此,我们建议估算一个分类器,该分类器可以将自然图像与参考数据分开,参考数据已构建为包含一些已知的自然图像结构。然后,分类器的特征便会揭示出有趣的结构。在这里,我们使用具有一层特征的分类器和包含自然图像协方差结构的参考数据。我们表明分类器的特征类似于从生成概率模型获得的特征。此外,我们研究了在分类器中使用的非线性的最佳形状。

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