Sept. 28, 2022, 1:15 a.m. | Huang Nisha, Tang Fan, Dong Weiming, Xu Changsheng

cs.CV updates on arXiv.org arxiv.org

Digital art synthesis is receiving increasing attention in the multimedia
community because of engaging the public with art effectively. Current digital
art synthesis methods usually use single-modality inputs as guidance, thereby
limiting the expressiveness of the model and the diversity of generated
results. To solve this problem, we propose the multimodal guided artwork
diffusion (MGAD) model, which is a diffusion-based digital artwork generation
approach that utilizes multimodal prompts as guidance to control the
classifier-free diffusion model. Additionally, the contrastive language-image …

art arxiv diffusion digital multimodal

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