Publication | Open Access
Unsupervised learning of hierarchical representations with convolutional deep belief networks
386
Citations
33
References
2011
Year
Geometric LearningConvolutional Neural NetworkEngineeringMachine LearningDeep Belief NetworksAutoencodersHierarchical RepresentationsImage AnalysisData SciencePattern RecognitionSelf-supervised LearningHierarchical Generative ModelSynthetic Image GenerationHierarchical Generative ModelsMachine VisionFeature LearningGenerative ModelsComputer ScienceDeep LearningComputer VisionGenerative Adversarial Network
There has been much interest in unsupervised learning of hierarchical generative models such as deep belief networks (DBNs); however, scaling such models to full-sized, high-dimensional images remains a difficult problem. To address this problem, we present the convolutional deep belief network , a hierarchical generative model that scales to realistic image sizes. This model is translation-invariant and supports efficient bottom-up and top-down probabilistic inference. Key to our approach is probabilistic max-pooling , a novel technique that shrinks the representations of higher layers in a probabilistically sound way. Our experiments show that the algorithm learns useful high-level visual features, such as object parts, from unlabeled images of objects and natural scenes. We demonstrate excellent performance on several visual recognition tasks and show that our model can perform hierarchical (bottom-up and top-down) inference over full-sized images.
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