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5 months ago

PixelGAN Autoencoders

Alireza Makhzani; Brendan Frey

PixelGAN Autoencoders

Abstract

In this paper, we describe the "PixelGAN autoencoder", a generative autoencoder in which the generative path is a convolutional autoregressive neural network on pixels (PixelCNN) that is conditioned on a latent code, and the recognition path uses a generative adversarial network (GAN) to impose a prior distribution on the latent code. We show that different priors result in different decompositions of information between the latent code and the autoregressive decoder. For example, by imposing a Gaussian distribution as the prior, we can achieve a global vs. local decomposition, or by imposing a categorical distribution as the prior, we can disentangle the style and content information of images in an unsupervised fashion. We further show how the PixelGAN autoencoder with a categorical prior can be directly used in semi-supervised settings and achieve competitive semi-supervised classification results on the MNIST, SVHN and NORB datasets.

Code Repositories

anonyme20/nips20
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
unsupervised-image-classification-on-mnistPixelGAN Autoencoders
Accuracy: 94.73
unsupervised-mnist-on-mnistPixelGAN Autoencoders
Accuracy: 94.73

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