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公开(公告)号:US12282696B2
公开(公告)日:2025-04-22
申请号:US18723429
申请日:2022-12-18
Applicant: Yeda Research and Development Co. Ltd.
Inventor: Tali Dekel , Shai Bagon , Omer Bar Tal , Narek Tumanyan
Abstract: Using a pre-trained and fixed Vision Transformer (ViT) model as an external semantic prior, a generator is trained given only a single structure/appearance image pair as input. Given two input images, a source structure image and a target appearance image, a new image is generated by the generator in which the structure of the source image is preserved, while the visual appearance of the target image is transferred in a semantically aware manner, so that objects in the structure image are “painted” with the visual appearance of semantically related objects in the appearance image. A self-supervised, pre-trained ViT model, such as a DINO-VIT model, is leveraged as an external semantic prior, allowing for training of the generator only on a single input image pair, without any additional information (e.g., segmentation/correspondences), and without adversarial training. The method may generate high quality results in high resolution (e.g., HD).