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Building a better probabilistic model of images by factorization

机译:通过分解建立更好的图像概率模型

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We describe a directed bilinear model that learns higher-order groupings among features of natural images. The model represents images in terms of two sets of latent variables: one set of variables represents which feature groups are active, while the other specifies the relative activity within groups. Such a factorized representation is beneficial because it is stable in response to small variations in the placement of features while still preserving information about relative spatial relationships. When trained on MNIST digits, the resulting representation provides state of the art performance in classification using a simple classifier. When trained on natural images, the model learns to group features according to proximity in position, orientation, and scale. The model achieves high log-likelihood (−94 nats), surpassing the current state of the art for natural images achievable with an mcRBM model.
机译:我们描述了一种有向双线性模型,该模型可学习自然图像特征之间的高阶分组。该模型用两组潜在变量表示图像:一组变量代表哪些要素组处于活动状态,而另一组变量指定组内的相对活动。这种因式分解表示形式是有益的,因为它在响应要素放置的微小变化时很稳定,同时仍保留有关相对空间关系的信息。在MNIST数字上进行训练时,所得表示形式使用简单的分类器提供了分类中的最新技术性能。在对自然图像进行训练后,该模型将学习根据位置,方向和比例的接近度对要素进行分组。该模型实现了较高的对数似然率(−94纳特),超过了使用mcRBM模型可实现的自然图像的最新技术水平。

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