Imagic: Text-Based Real Image Editing with Diffusion Models
Bahjat Kawar(Technion – Israel Institute of Technology), Michal Irani(Weizmann Institute of Science), Tali Dekel(Google (United States)), Omer Tov(Google (United States)), Shiran Zada(Google (United States)), Hui‐Wen Chang(Google (United States)), Inbar Mosseri(Google (United States)), Oran Lang(Google (Israel))
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