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Photographic Image Synthesis with Cascaded Refinement Networks

About

We present an approach to synthesizing photographic images conditioned on semantic layouts. Given a semantic label map, our approach produces an image with photographic appearance that conforms to the input layout. The approach thus functions as a rendering engine that takes a two-dimensional semantic specification of the scene and produces a corresponding photographic image. Unlike recent and contemporaneous work, our approach does not rely on adversarial training. We show that photographic images can be synthesized from semantic layouts by a single feedforward network with appropriate structure, trained end-to-end with a direct regression objective. The presented approach scales seamlessly to high resolutions; we demonstrate this by synthesizing photographic images at 2-megapixel resolution, the full resolution of our training data. Extensive perceptual experiments on datasets of outdoor and indoor scenes demonstrate that images synthesized by the presented approach are considerably more realistic than alternative approaches. The results are shown in the supplementary video at https://youtu.be/0fhUJT21-bs

Qifeng Chen, Vladlen Koltun• 2017

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes (test)
mIoU34.83
1145
Semantic Image SynthesisADE20K
FID73.3
66
Semantic Image SynthesisCityscapes
FID104.7
54
Semantic Image SynthesisADE20K (val)
FID73.3
47
Semantic Image SynthesisCOCO Stuff (val)
FID70.4
42
Semantic Image SynthesisCOCO Stuff
FID70.4
40
Image HarmonizationHAdobe5k iHarmony4 (test)
MSE90.11
37
Semantic Image SynthesisADE20K (test)
FID73.3
20
Semantic Image SynthesisCityscapes (val)
mIoU52.4
15
Image EnhancementMIT-Adobe-5K-DPE (test)
PSNR22.38
13
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