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Natural Image Manipulation for Autoregressive Models Using Fisher Scores

Published 6 years agoVersion 2arXiv:1912.05015

Authors

Wilson Yan, Jonathan Ho, Pieter Abbeel

Categories

cs.CV

Abstract

Deep autoregressive models are one of the most powerful models that exist today which achieve state-of-the-art bits per dim. However, they lie at a strict disadvantage when it comes to controlled sample generation compared to latent variable models. Latent variable models such as VAEs and normalizing flows allow meaningful semantic manipulations in latent space, which autoregressive models do not have. In this paper, we propose using Fisher scores as a method to extract embeddings from an autoregressive model to use for interpolation and show that our method provides more meaningful sample manipulation compared to alternate embeddings such as network activations.

Natural Image Manipulation for Autoregressive Models Using Fisher Scores

6 years ago
v2
3 authors

Categories

cs.CV

Abstract

Deep autoregressive models are one of the most powerful models that exist today which achieve state-of-the-art bits per dim. However, they lie at a strict disadvantage when it comes to controlled sample generation compared to latent variable models. Latent variable models such as VAEs and normalizing flows allow meaningful semantic manipulations in latent space, which autoregressive models do not have. In this paper, we propose using Fisher scores as a method to extract embeddings from an autoregressive model to use for interpolation and show that our method provides more meaningful sample manipulation compared to alternate embeddings such as network activations.

Authors

Wilson Yan, Jonathan Ho, Pieter Abbeel

arXiv ID: 1912.05015
Published Nov 25, 2019

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