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arxiv: 2106.02531 · v1 · pith:TETWJOK7 · submitted 2021-06-04 · cs.CV · cs.AI· cs.LG· stat.ML

CAFLOW: Conditional Autoregressive Flows

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classification cs.CV cs.AIcs.LGstat.ML
keywords conditionalauto-regressiveflowsimagemodelingnormalizingcaflowconditioning
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We introduce CAFLOW, a new diverse image-to-image translation model that simultaneously leverages the power of auto-regressive modeling and the modeling efficiency of conditional normalizing flows. We transform the conditioning image into a sequence of latent encodings using a multi-scale normalizing flow and repeat the process for the conditioned image. We model the conditional distribution of the latent encodings by modeling the auto-regressive distributions with an efficient multi-scale normalizing flow, where each conditioning factor affects image synthesis at its respective resolution scale. Our proposed framework performs well on a range of image-to-image translation tasks. It outperforms former designs of conditional flows because of its expressive auto-regressive structure.

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