Guided Variational Autoencoder for Disentanglement Learning

CVPR(2020)

引用 107|浏览371
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摘要
We propose an algorithm, guided variational autoencoder (Guided-VAE), that is able to learn a controllable generative model by performing latent representation disentanglement learning. The learning objective is achieved by providing signals to the latent encoding/embedding in VAE without changing its main backbone architecture, hence retaining the desirable properties of the VAE. We design an unsupervised strategy and a supervised strategy in Guided-VAE and observe enhanced modeling and controlling capability over the vanilla VAE. In the unsupervised strategy, we guide the VAE learning by introducing a lightweight decoder that learns latent geometric transformation and principal components; in the supervised strategy, we use an adversarial excitation and inhibition mechanism to encourage the disentanglement of the latent variables. Guided-VAE enjoys its transparency and simplicity for the general representation learning task, as well as disentanglement learning. On a number of experiments for representation learning, improved synthesis/sampling, better disentanglement for classification, and reduced classification errors in meta-learning have been observed.
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关键词
guided variational autoencoder,Guided-VAE,controllable generative model,latent representation disentanglement learning,supervised strategy,enhanced modeling,controlling capability,vanilla VAE,unsupervised strategy,VAE learning,latent geometric transformation,latent variables,general representation learning task,meta learning
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