Magic Insert: Style-Aware Drag-and-Drop

Autor: Ruiz, Nataniel, Li, Yuanzhen, Wadhwa, Neal, Pritch, Yael, Rubinstein, Michael, Jacobs, David E., Fruchter, Shlomi
Rok vydání: 2024
Předmět:
Druh dokumentu: Working Paper
Popis: We present Magic Insert, a method for dragging-and-dropping subjects from a user-provided image into a target image of a different style in a physically plausible manner while matching the style of the target image. This work formalizes the problem of style-aware drag-and-drop and presents a method for tackling it by addressing two sub-problems: style-aware personalization and realistic object insertion in stylized images. For style-aware personalization, our method first fine-tunes a pretrained text-to-image diffusion model using LoRA and learned text tokens on the subject image, and then infuses it with a CLIP representation of the target style. For object insertion, we use Bootstrapped Domain Adaption to adapt a domain-specific photorealistic object insertion model to the domain of diverse artistic styles. Overall, the method significantly outperforms traditional approaches such as inpainting. Finally, we present a dataset, SubjectPlop, to facilitate evaluation and future progress in this area. Project page: https://magicinsert.github.io/
Comment: Project page: https://magicinsert.github.io/
Databáze: arXiv