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LayoutVAE: Stochastic Scene Layout Generation From a Label Set

About

Recently there is an increasing interest in scene generation within the research community. However, models used for generating scene layouts from textual description largely ignore plausible visual variations within the structure dictated by the text. We propose LayoutVAE, a variational autoencoder based framework for generating stochastic scene layouts. LayoutVAE is a versatile modeling framework that allows for generating full image layouts given a label set, or per label layouts for an existing image given a new label. In addition, it is also capable of detecting unusual layouts, potentially providing a way to evaluate layout generation problem. Extensive experiments on MNIST-Layouts and challenging COCO 2017 Panoptic dataset verifies the effectiveness of our proposed framework.

Akash Abdu Jyothi, Thibaut Durand, Jiawei He, Leonid Sigal, Greg Mori• 2019

Related benchmarks

TaskDatasetResultRank
Conditional layout generation (Category to Size and Position)PubLayNet
FID26
27
Conditional layout generation (Category to Size and Position)Rico
FID30.6
27
Conditional Layout GenerationPubLayNet (test)
IoU0.45
12
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