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Example-Guided Style Consistent Image Synthesis from Semantic Labeling

About

Example-guided image synthesis aims to synthesize an image from a semantic label map and an exemplary image indicating style. We use the term "style" in this problem to refer to implicit characteristics of images, for example: in portraits "style" includes gender, racial identity, age, hairstyle; in full body pictures it includes clothing; in street scenes, it refers to weather and time of day and such like. A semantic label map in these cases indicates facial expression, full body pose, or scene segmentation. We propose a solution to the example-guided image synthesis problem using conditional generative adversarial networks with style consistency. Our key contributions are (i) a novel style consistency discriminator to determine whether a pair of images are consistent in style; (ii) an adaptive semantic consistency loss; and (iii) a training data sampling strategy, for synthesizing style-consistent results to the exemplar.

Miao Wang, Guo-Ye Yang, Ruilong Li, Run-Ze Liang, Song-Hai Zhang, Peter. M. Hall, Shi-Min Hu• 2019

Related benchmarks

TaskDatasetResultRank
Image-to-Image TranslationCelebA-HQ
FID49.39
28
Image-to-Image TranslationDeepFashion (val)
FID28.49
9
Image-to-Image TranslationADE20K (train val)
FID56.23
9
Image-to-Image TranslationCOCO Stuff
FID77.63
9
Image TranslationADE20K
VGG42 Score0.84
8
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