Publication | Closed Access
Attentive Normalization for Conditional Image Generation
41
Citations
38
References
2020
Year
Unknown Venue
Image AnalysisMachine LearningMachine VisionTraditional Instance NormalizationEngineeringGenerative Adversarial NetworkGenerative ModelsGenerative ModelComputational ImagingComputer ScienceHuman Image SynthesisDeep LearningAttentive NormalizationComputer VisionInternal Semantic SimilaritySynthetic Image Generation
Traditional convolution-based generative adversarial networks synthesize images based on hierarchical local operations, where long-range dependency relation is implicitly modeled with a Markov chain. It is still not sufficient for categories with complicated structures. In this paper, we characterize long-range dependence with attentive normalization (AN), which is an extension to traditional instance normalization. Specifically, the input feature map is softly divided into several regions based on its internal semantic similarity, which are respectively normalized. It enhances consistency between distant regions with semantic correspondence. Compared with self-attention GAN, our attentive normalization does not need to measure the correlation of all locations, and thus can be directly applied to large-size feature maps without much computational burden. Extensive experiments on class-conditional image generation and semantic inpainting verify the efficacy of our proposed module.
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