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PixelVAE++: Improved PixelVAE with Discrete Prior

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Constructing powerful generative models for natural images is a challenging task. PixelCNN models capture details and local information in images very well but have limited receptive field. Variational autoencoders with a factorial decoder can capture global information easily, but they often fail to reconstruct details faithfully. PixelVAE combines the best features of the two models and constructs a generative model that is able to learn local and global structures. Here we introduce PixelVAE++, a VAE with three types of latent variables and a PixelCNN++ for the decoder. We introduce a novel architecture that reuses a part of the decoder as an encoder. We achieve the state of the art performance on binary data sets such as MNIST and Omniglot and achieve the state of the art performance on CIFAR-10 among latent variable models while keeping the latent variables informative.

Hossein Sadeghi, Evgeny Andriyash, Walter Vinci, Lorenzo Buffoni, Mohammad H. Amin• 2019

Related benchmarks

TaskDatasetResultRank
Generative ModelingCIFAR-10
BPD2.9
46
Density EstimationCIFAR-10
bpd2.9
40
Density EstimationOMNIGLOT dynamically binarized (test)
NLL88.29
16
Generative ModelingCIFAR-10 8-bit color (test)
Bits per Dimension2.9
15
Generative ModelingDynamically binarized MNIST (test)--
13
Generative ModelingMNIST--
10
Density EstimationMNIST
NLL (nats)78
5
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