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An unofficial TensorFlow implementation of "NVAE - A Deep Hierarchical Variational Autoencoder" from NVlabs (NeurIPS 2020 spotlight paper)

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stevensdavid/nvae-tf

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NVAE-TF

A TensorFlow implementation of NVAE.

Details of our implementation and a discussion of the results is available in the PDF DD2412_Final_Project_NVAE.pdf.

The code in this repository is currently quite disorganized. The main file is train.py which can be executed with the flag python train.py -h in order to find out about the various options that can be provided as command line flags. The defaults are set to the hyperparameters that were suggested in the source paper for MNIST. The model itself is split between the files models.py which contains the main NVAE class, and the four files encoder.py, decoder.py, preprocess.py and postprocess.py which contain classes forming the four components of the NVAE architecture.

Some functionality currently resides in other branches. Specifically, an implementation that uses spectral regularization instead of spectral normalization is available on the branch spectral_reg, and the other branches are related to various tweaks to the evaluation metrics.

Extending the code to other datasets should not be more difficult than replacing the use of Bernoulli distributions with mixed Gaussians and writing a new dataset loader.

Results

Model NLL (nats) FID Precision Recall Training time (h)
Ours
Step + SN 87.06 (+-2.18) 8.87 0.8950 (+- 0.0999) 0.9227 (+- 0.0879) 49
Step + SR 80.33 (+-2.01) 30.37 0.8559 (+- 0.0608) 0.8803 (+- 0.0546) 104
Epoch + SN 98.92 (+-1.83) 20.85 0.7541 (+- 0.152) 0.8828 (+- 0.114) 71
Others
Vanilla VAE 86.76 28.2 (+- 0.3) - - -
NVIDIA's NVAE w/o flow 78.01 - - - -
NVIDIA's NVAE w/ flow 78.19 - - - -
Generative Latent Flow - 5.8 (+- 0.1) 0.981 0.963 -
PixelCNN 81.30 - - - -
LMCONV 77.58 - - - -

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An unofficial TensorFlow implementation of "NVAE - A Deep Hierarchical Variational Autoencoder" from NVlabs (NeurIPS 2020 spotlight paper)

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