Litcius/Paper detail

SEAN: Image Synthesis With Semantic Region-Adaptive Normalization

Peihao Zhu, Rameen Abdal, Yipeng Qin, Peter Wonka

2020341 citationsDOIOpen Access PDF

Abstract

We propose semantic region-adaptive normalization (SEAN), a simple but effective building block for Generative Adversarial Networks conditioned on segmentation masks that describe the semantic regions in the desired output image. Using SEAN normalization, we can build a network architecture that can control the style of each semantic region individually, e.g., we can specify one style reference image per region. SEAN is better suited to encode, transfer, and synthesize style than the best previous method in terms of reconstruction quality, variability, and visual quality. We evaluate SEAN on multiple datasets and report better quantitative metrics (e.g. FID, PSNR) than the current state of the art. SEAN also pushes the frontier of interactive image editing. We can interactively edit images by changing segmentation masks or the style for any given region. We can also interpolate styles from two reference images per region.

Topics & Concepts

Normalization (sociology)Computer scienceSegmentationArtificial intelligenceGenerative grammarImage (mathematics)Pattern recognition (psychology)Semantics (computer science)Image segmentationComputer visionAdversarial systemBlock (permutation group theory)Image synthesisNatural language processingSemantic analysis (machine learning)Feature extractionArchitectureSimple (philosophy)Image translationImage processingSpatial normalizationGenerative adversarial networkNetwork architectureMatching (statistics)State (computer science)Generative Adversarial Networks and Image SynthesisAdvanced Image Processing TechniquesDigital Media Forensic Detection