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3 months ago

Feature Alignment as a Generative Process

Tiago de Souza Farias Jonas Maziero

Feature Alignment as a Generative Process

Abstract

Reversibility in artificial neural networks allows us to retrieve the input given an output. We present feature alignment, a method for approximating reversibility in arbitrary neural networks. We train a network by minimizing the distance between the output of a data point and the random output with respect to a random input. We applied the technique to the MNIST, CIFAR-10, CelebA and STL-10 image datasets. We demonstrate that this method can roughly recover images from just their latent representation without the need of a decoder. By utilizing the formulation of variational autoencoders, we demonstrate that it is possible to produce new images that are statistically comparable to the training data. Furthermore, we demonstrate that the quality of the images can be improved by coupling a generator and a discriminator together. In addition, we show how this method, with a few minor modifications, can be used to train networks locally, which has the potential to save computational memory resources.

Code Repositories

tiago939/feature_alignment
Official
pytorch
Mentioned in GitHub
tiago939/feature_aligment
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
image-generation-on-celeba-64x64Feature Alignment
FID: 128.35
image-generation-on-mnistFeature Alignment
FID: 37.50

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