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Papers/Interactive Image Synthesis with Panoptic Layout Generation

Interactive Image Synthesis with Panoptic Layout Generation

Bo wang, Tao Wu, Minfeng Zhu, Peng Du

2022-03-04CVPR 2022 1Layout-to-Image GenerationImage Generation
PaperPDFCode(official)

Abstract

Interactive image synthesis from user-guided input is a challenging task when users wish to control the scene structure of a generated image with ease.Although remarkable progress has been made on layout-based image synthesis approaches, in order to get realistic fake image in interactive scene, existing methods require high-precision inputs, which probably need adjustment several times and are unfriendly to novice users. When placement of bounding boxes is subject to perturbation, layout-based models suffer from "missing regions" in the constructed semantic layouts and hence undesirable artifacts in the generated images. In this work, we propose Panoptic Layout Generative Adversarial Networks (PLGAN) to address this challenge. The PLGAN employs panoptic theory which distinguishes object categories between "stuff" with amorphous boundaries and "things" with well-defined shapes, such that stuff and instance layouts are constructed through separate branches and later fused into panoptic layouts. In particular, the stuff layouts can take amorphous shapes and fill up the missing regions left out by the instance layouts. We experimentally compare our PLGAN with state-of-the-art layout-based models on the COCO-Stuff, Visual Genome, and Landscape datasets. The advantages of PLGAN are not only visually demonstrated but quantitatively verified in terms of inception score, Fr\'echet inception distance, classification accuracy score, and coverage.

Results

TaskDatasetMetricValueModel
Image GenerationVisual Genome 128x128FID20.62PLGAN
Image GenerationVisual Genome 128x128Inception Score10.6PLGAN
Image GenerationVisual Genome 256x256FID28.06PLGAN
Image GenerationVisual Genome 256x256Inception Score13.2PLGAN

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