Proposes PrOSe parameterization of latent space as product of orthogonal spheres to improve disentangled representation learning, with closed-form ortho-normality loss under equal block size assumption.
Learning Disentangled Representations with Reference-Based Variational Autoencoders
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abstract
Learning disentangled representations from visual data, where different high-level generative factors are independently encoded, is of importance for many computer vision tasks. Solving this problem, however, typically requires to explicitly label all the factors of interest in training images. To alleviate the annotation cost, we introduce a learning setting which we refer to as "reference-based disentangling". Given a pool of unlabeled images, the goal is to learn a representation where a set of target factors are disentangled from others. The only supervision comes from an auxiliary "reference set" containing images where the factors of interest are constant. In order to address this problem, we propose reference-based variational autoencoders, a novel deep generative model designed to exploit the weak-supervision provided by the reference set. By addressing tasks such as feature learning, conditional image generation or attribute transfer, we validate the ability of the proposed model to learn disentangled representations from this minimal form of supervision.
fields
cs.CV 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Product of Orthogonal Spheres Parameterization for Disentangled Representation Learning
Proposes PrOSe parameterization of latent space as product of orthogonal spheres to improve disentangled representation learning, with closed-form ortho-normality loss under equal block size assumption.